Sentiment Classification & How To "Frame Problems" for a Neural Network

by Andrew Trask

What You Should Already Know

  • neural networks, forward and back-propagation
  • stochastic gradient descent
  • mean squared error
  • and train/test splits

Where to Get Help if You Need it

  • Re-watch previous Udacity Lectures
  • Leverage the recommended Course Reading Material - Grokking Deep Learning (40% Off: traskud17)
  • Shoot me a tweet @iamtrask

Tutorial Outline:

  • Intro: The Importance of "Framing a Problem"
  • Curate a Dataset
  • Developing a "Predictive Theory"
  • PROJECT 1: Quick Theory Validation
  • Transforming Text to Numbers
  • PROJECT 2: Creating the Input/Output Data
  • Putting it all together in a Neural Network
  • PROJECT 3: Building our Neural Network
  • Understanding Neural Noise
  • PROJECT 4: Making Learning Faster by Reducing Noise
  • Analyzing Inefficiencies in our Network
  • PROJECT 5: Making our Network Train and Run Faster
  • Further Noise Reduction
  • PROJECT 6: Reducing Noise by Strategically Reducing the Vocabulary
  • Analysis: What's going on in the weights?

Lesson: Curate a Dataset


In [2]:
def pretty_print_review_and_label(i):
    print(labels[i] + "\t:\t" + reviews[i][:80] + "...")

g = open('reviews.txt','r') # What we know!
reviews = list(map(lambda x:x[:-1],g.readlines()))
g.close()

g = open('labels.txt','r') # What we WANT to know!
labels = list(map(lambda x:x[:-1].upper(),g.readlines()))
g.close()

In [3]:
len(reviews)


Out[3]:
25000

In [4]:
reviews[0]


Out[4]:
'bromwell high is a cartoon comedy . it ran at the same time as some other programs about school life  such as  teachers  . my   years in the teaching profession lead me to believe that bromwell high  s satire is much closer to reality than is  teachers  . the scramble to survive financially  the insightful students who can see right through their pathetic teachers  pomp  the pettiness of the whole situation  all remind me of the schools i knew and their students . when i saw the episode in which a student repeatedly tried to burn down the school  i immediately recalled . . . . . . . . . at . . . . . . . . . . high . a classic line inspector i  m here to sack one of your teachers . student welcome to bromwell high . i expect that many adults of my age think that bromwell high is far fetched . what a pity that it isn  t   '

In [5]:
labels[0]


Out[5]:
'POSITIVE'

Lesson: Develop a Predictive Theory


In [6]:
print("labels.txt \t : \t reviews.txt\n")
pretty_print_review_and_label(2137)
pretty_print_review_and_label(12816)
pretty_print_review_and_label(6267)
pretty_print_review_and_label(21934)
pretty_print_review_and_label(5297)
pretty_print_review_and_label(4998)


labels.txt 	 : 	 reviews.txt

NEGATIVE	:	this movie is terrible but it has some good effects .  ...
POSITIVE	:	adrian pasdar is excellent is this film . he makes a fascinating woman .  ...
NEGATIVE	:	comment this movie is impossible . is terrible  very improbable  bad interpretat...
POSITIVE	:	excellent episode movie ala pulp fiction .  days   suicides . it doesnt get more...
NEGATIVE	:	if you haven  t seen this  it  s terrible . it is pure trash . i saw this about ...
POSITIVE	:	this schiffer guy is a real genius  the movie is of excellent quality and both e...

Project 1: Quick Theory Validation


In [7]:
from collections import Counter
import numpy as np

In [8]:
positive_counts = Counter()
negative_counts = Counter()
total_counts = Counter()

In [9]:
for i in range(len(reviews)):
    if(labels[i] == 'POSITIVE'):
        for word in reviews[i].split(" "):
            positive_counts[word] += 1
            total_counts[word] += 1
    else:
        for word in reviews[i].split(" "):
            negative_counts[word] += 1
            total_counts[word] += 1

In [10]:
positive_counts.most_common()


Out[10]:
[('', 550468),
 ('the', 173324),
 ('.', 159654),
 ('and', 89722),
 ('a', 83688),
 ('of', 76855),
 ('to', 66746),
 ('is', 57245),
 ('in', 50215),
 ('br', 49235),
 ('it', 48025),
 ('i', 40743),
 ('that', 35630),
 ('this', 35080),
 ('s', 33815),
 ('as', 26308),
 ('with', 23247),
 ('for', 22416),
 ('was', 21917),
 ('film', 20937),
 ('but', 20822),
 ('movie', 19074),
 ('his', 17227),
 ('on', 17008),
 ('you', 16681),
 ('he', 16282),
 ('are', 14807),
 ('not', 14272),
 ('t', 13720),
 ('one', 13655),
 ('have', 12587),
 ('be', 12416),
 ('by', 11997),
 ('all', 11942),
 ('who', 11464),
 ('an', 11294),
 ('at', 11234),
 ('from', 10767),
 ('her', 10474),
 ('they', 9895),
 ('has', 9186),
 ('so', 9154),
 ('like', 9038),
 ('about', 8313),
 ('very', 8305),
 ('out', 8134),
 ('there', 8057),
 ('she', 7779),
 ('what', 7737),
 ('or', 7732),
 ('good', 7720),
 ('more', 7521),
 ('when', 7456),
 ('some', 7441),
 ('if', 7285),
 ('just', 7152),
 ('can', 7001),
 ('story', 6780),
 ('time', 6515),
 ('my', 6488),
 ('great', 6419),
 ('well', 6405),
 ('up', 6321),
 ('which', 6267),
 ('their', 6107),
 ('see', 6026),
 ('also', 5550),
 ('we', 5531),
 ('really', 5476),
 ('would', 5400),
 ('will', 5218),
 ('me', 5167),
 ('had', 5148),
 ('only', 5137),
 ('him', 5018),
 ('even', 4964),
 ('most', 4864),
 ('other', 4858),
 ('were', 4782),
 ('first', 4755),
 ('than', 4736),
 ('much', 4685),
 ('its', 4622),
 ('no', 4574),
 ('into', 4544),
 ('people', 4479),
 ('best', 4319),
 ('love', 4301),
 ('get', 4272),
 ('how', 4213),
 ('life', 4199),
 ('been', 4189),
 ('because', 4079),
 ('way', 4036),
 ('do', 3941),
 ('made', 3823),
 ('films', 3813),
 ('them', 3805),
 ('after', 3800),
 ('many', 3766),
 ('two', 3733),
 ('too', 3659),
 ('think', 3655),
 ('movies', 3586),
 ('characters', 3560),
 ('character', 3514),
 ('don', 3468),
 ('man', 3460),
 ('show', 3432),
 ('watch', 3424),
 ('seen', 3414),
 ('then', 3358),
 ('little', 3341),
 ('still', 3340),
 ('make', 3303),
 ('could', 3237),
 ('never', 3226),
 ('being', 3217),
 ('where', 3173),
 ('does', 3069),
 ('over', 3017),
 ('any', 3002),
 ('while', 2899),
 ('know', 2833),
 ('did', 2790),
 ('years', 2758),
 ('here', 2740),
 ('ever', 2734),
 ('end', 2696),
 ('these', 2694),
 ('such', 2590),
 ('real', 2568),
 ('scene', 2567),
 ('back', 2547),
 ('those', 2485),
 ('though', 2475),
 ('off', 2463),
 ('new', 2458),
 ('your', 2453),
 ('go', 2440),
 ('acting', 2437),
 ('plot', 2432),
 ('world', 2429),
 ('scenes', 2427),
 ('say', 2414),
 ('through', 2409),
 ('makes', 2390),
 ('better', 2381),
 ('now', 2368),
 ('work', 2346),
 ('young', 2343),
 ('old', 2311),
 ('ve', 2307),
 ('find', 2272),
 ('both', 2248),
 ('before', 2177),
 ('us', 2162),
 ('again', 2158),
 ('series', 2153),
 ('quite', 2143),
 ('something', 2135),
 ('cast', 2133),
 ('should', 2121),
 ('part', 2098),
 ('always', 2088),
 ('lot', 2087),
 ('another', 2075),
 ('actors', 2047),
 ('director', 2040),
 ('family', 2032),
 ('between', 2016),
 ('own', 2016),
 ('m', 1998),
 ('may', 1997),
 ('same', 1972),
 ('role', 1967),
 ('watching', 1966),
 ('every', 1954),
 ('funny', 1953),
 ('doesn', 1935),
 ('performance', 1928),
 ('few', 1918),
 ('bad', 1907),
 ('look', 1900),
 ('re', 1884),
 ('why', 1855),
 ('things', 1849),
 ('times', 1832),
 ('big', 1815),
 ('however', 1795),
 ('actually', 1790),
 ('action', 1789),
 ('going', 1783),
 ('bit', 1757),
 ('comedy', 1742),
 ('down', 1740),
 ('music', 1738),
 ('must', 1728),
 ('take', 1709),
 ('saw', 1692),
 ('long', 1690),
 ('right', 1688),
 ('fun', 1686),
 ('fact', 1684),
 ('excellent', 1683),
 ('around', 1674),
 ('didn', 1672),
 ('without', 1671),
 ('thing', 1662),
 ('thought', 1639),
 ('got', 1635),
 ('each', 1630),
 ('day', 1614),
 ('feel', 1597),
 ('seems', 1596),
 ('come', 1594),
 ('done', 1586),
 ('beautiful', 1580),
 ('especially', 1572),
 ('played', 1571),
 ('almost', 1566),
 ('want', 1562),
 ('yet', 1556),
 ('give', 1553),
 ('pretty', 1549),
 ('last', 1543),
 ('since', 1519),
 ('different', 1504),
 ('although', 1501),
 ('gets', 1490),
 ('true', 1487),
 ('interesting', 1481),
 ('job', 1470),
 ('enough', 1455),
 ('our', 1454),
 ('shows', 1447),
 ('horror', 1441),
 ('woman', 1439),
 ('tv', 1400),
 ('probably', 1398),
 ('father', 1395),
 ('original', 1393),
 ('girl', 1390),
 ('point', 1379),
 ('plays', 1378),
 ('wonderful', 1372),
 ('far', 1358),
 ('course', 1358),
 ('john', 1350),
 ('rather', 1340),
 ('isn', 1328),
 ('ll', 1326),
 ('later', 1324),
 ('dvd', 1324),
 ('whole', 1310),
 ('war', 1310),
 ('d', 1307),
 ('found', 1306),
 ('away', 1306),
 ('screen', 1305),
 ('nothing', 1300),
 ('year', 1297),
 ('once', 1296),
 ('hard', 1294),
 ('together', 1280),
 ('set', 1277),
 ('am', 1277),
 ('having', 1266),
 ('making', 1265),
 ('place', 1263),
 ('might', 1260),
 ('comes', 1260),
 ('sure', 1253),
 ('american', 1248),
 ('play', 1245),
 ('kind', 1244),
 ('perfect', 1242),
 ('takes', 1242),
 ('performances', 1237),
 ('himself', 1230),
 ('worth', 1221),
 ('everyone', 1221),
 ('anyone', 1214),
 ('actor', 1203),
 ('three', 1201),
 ('wife', 1196),
 ('classic', 1192),
 ('goes', 1186),
 ('ending', 1178),
 ('version', 1168),
 ('star', 1149),
 ('enjoy', 1146),
 ('book', 1142),
 ('nice', 1132),
 ('everything', 1128),
 ('during', 1124),
 ('put', 1118),
 ('seeing', 1111),
 ('least', 1102),
 ('house', 1100),
 ('high', 1095),
 ('watched', 1094),
 ('loved', 1087),
 ('men', 1087),
 ('night', 1082),
 ('anything', 1075),
 ('believe', 1071),
 ('guy', 1071),
 ('top', 1063),
 ('amazing', 1058),
 ('hollywood', 1056),
 ('looking', 1053),
 ('main', 1044),
 ('definitely', 1043),
 ('gives', 1031),
 ('home', 1029),
 ('seem', 1028),
 ('episode', 1023),
 ('audience', 1020),
 ('sense', 1020),
 ('truly', 1017),
 ('special', 1011),
 ('second', 1009),
 ('short', 1009),
 ('fan', 1009),
 ('mind', 1005),
 ('human', 1001),
 ('recommend', 999),
 ('full', 996),
 ('black', 995),
 ('help', 991),
 ('along', 989),
 ('trying', 987),
 ('small', 986),
 ('death', 985),
 ('friends', 981),
 ('remember', 974),
 ('often', 970),
 ('said', 966),
 ('favorite', 962),
 ('heart', 959),
 ('early', 957),
 ('left', 956),
 ('until', 955),
 ('script', 954),
 ('let', 954),
 ('maybe', 937),
 ('today', 936),
 ('live', 934),
 ('less', 934),
 ('moments', 933),
 ('others', 929),
 ('brilliant', 926),
 ('shot', 925),
 ('liked', 923),
 ('become', 916),
 ('won', 915),
 ('used', 910),
 ('style', 907),
 ('mother', 895),
 ('lives', 894),
 ('came', 893),
 ('stars', 890),
 ('cinema', 889),
 ('looks', 885),
 ('perhaps', 884),
 ('read', 882),
 ('enjoyed', 879),
 ('boy', 875),
 ('drama', 873),
 ('highly', 871),
 ('given', 870),
 ('playing', 867),
 ('use', 864),
 ('next', 859),
 ('women', 858),
 ('fine', 857),
 ('effects', 856),
 ('kids', 854),
 ('entertaining', 853),
 ('need', 852),
 ('line', 850),
 ('works', 848),
 ('someone', 847),
 ('mr', 836),
 ('simply', 835),
 ('picture', 833),
 ('children', 833),
 ('face', 831),
 ('keep', 831),
 ('friend', 831),
 ('dark', 830),
 ('overall', 828),
 ('certainly', 828),
 ('minutes', 827),
 ('wasn', 824),
 ('history', 822),
 ('finally', 820),
 ('couple', 816),
 ('against', 815),
 ('son', 809),
 ('understand', 808),
 ('lost', 807),
 ('michael', 805),
 ('else', 801),
 ('throughout', 798),
 ('fans', 797),
 ('city', 792),
 ('reason', 789),
 ('written', 787),
 ('production', 787),
 ('several', 784),
 ('school', 783),
 ('based', 781),
 ('rest', 781),
 ('try', 780),
 ('dead', 776),
 ('hope', 775),
 ('strong', 768),
 ('white', 765),
 ('tell', 759),
 ('itself', 758),
 ('half', 753),
 ('person', 749),
 ('sometimes', 746),
 ('past', 744),
 ('start', 744),
 ('genre', 743),
 ('beginning', 739),
 ('final', 739),
 ('town', 738),
 ('art', 734),
 ('humor', 732),
 ('game', 732),
 ('yes', 731),
 ('idea', 731),
 ('late', 730),
 ('becomes', 729),
 ('despite', 729),
 ('able', 726),
 ('case', 726),
 ('money', 723),
 ('child', 721),
 ('completely', 721),
 ('side', 719),
 ('camera', 716),
 ('getting', 714),
 ('instead', 712),
 ('soon', 702),
 ('under', 700),
 ('viewer', 699),
 ('age', 697),
 ('days', 696),
 ('stories', 696),
 ('felt', 694),
 ('simple', 694),
 ('roles', 693),
 ('video', 688),
 ('name', 683),
 ('either', 683),
 ('doing', 677),
 ('turns', 674),
 ('wants', 671),
 ('close', 671),
 ('title', 669),
 ('wrong', 668),
 ('went', 666),
 ('james', 665),
 ('evil', 659),
 ('budget', 657),
 ('episodes', 657),
 ('relationship', 655),
 ('fantastic', 653),
 ('piece', 653),
 ('david', 651),
 ('turn', 648),
 ('murder', 646),
 ('parts', 645),
 ('brother', 644),
 ('absolutely', 643),
 ('head', 643),
 ('experience', 642),
 ('eyes', 641),
 ('sex', 638),
 ('direction', 637),
 ('called', 637),
 ('directed', 636),
 ('lines', 634),
 ('behind', 633),
 ('sort', 632),
 ('actress', 631),
 ('lead', 630),
 ('oscar', 628),
 ('including', 627),
 ('example', 627),
 ('known', 625),
 ('musical', 625),
 ('chance', 621),
 ('score', 620),
 ('already', 619),
 ('feeling', 619),
 ('hit', 619),
 ('voice', 615),
 ('moment', 612),
 ('living', 612),
 ('low', 610),
 ('supporting', 610),
 ('ago', 609),
 ('themselves', 608),
 ('reality', 605),
 ('hilarious', 605),
 ('jack', 604),
 ('told', 603),
 ('hand', 601),
 ('quality', 600),
 ('moving', 600),
 ('dialogue', 600),
 ('song', 599),
 ('happy', 599),
 ('matter', 598),
 ('paul', 598),
 ('light', 594),
 ('future', 593),
 ('entire', 592),
 ('finds', 591),
 ('gave', 589),
 ('laugh', 587),
 ('released', 586),
 ('expect', 584),
 ('fight', 581),
 ('particularly', 580),
 ('cinematography', 579),
 ('police', 579),
 ('whose', 578),
 ('type', 578),
 ('sound', 578),
 ('view', 573),
 ('enjoyable', 573),
 ('number', 572),
 ('romantic', 572),
 ('husband', 572),
 ('daughter', 572),
 ('documentary', 571),
 ('self', 570),
 ('superb', 569),
 ('modern', 569),
 ('took', 569),
 ('robert', 569),
 ('mean', 566),
 ('shown', 563),
 ('coming', 561),
 ('important', 560),
 ('king', 559),
 ('leave', 559),
 ('change', 558),
 ('somewhat', 555),
 ('wanted', 555),
 ('tells', 554),
 ('events', 552),
 ('run', 552),
 ('career', 552),
 ('country', 552),
 ('heard', 550),
 ('season', 550),
 ('greatest', 549),
 ('girls', 549),
 ('etc', 547),
 ('care', 546),
 ('starts', 545),
 ('english', 542),
 ('killer', 541),
 ('tale', 540),
 ('guys', 540),
 ('totally', 540),
 ('animation', 540),
 ('usual', 539),
 ('miss', 535),
 ('opinion', 535),
 ('easy', 531),
 ('violence', 531),
 ('songs', 530),
 ('british', 528),
 ('says', 526),
 ('realistic', 525),
 ('writing', 524),
 ('writer', 522),
 ('act', 522),
 ('comic', 521),
 ('thriller', 519),
 ('television', 517),
 ('power', 516),
 ('ones', 515),
 ('kid', 514),
 ('york', 513),
 ('novel', 513),
 ('alone', 512),
 ('problem', 512),
 ('attention', 509),
 ('involved', 508),
 ('kill', 507),
 ('extremely', 507),
 ('seemed', 506),
 ('hero', 505),
 ('french', 505),
 ('rock', 504),
 ('stuff', 501),
 ('wish', 499),
 ('begins', 498),
 ('taken', 497),
 ('sad', 497),
 ('ways', 496),
 ('richard', 495),
 ('knows', 494),
 ('atmosphere', 493),
 ('similar', 491),
 ('surprised', 491),
 ('taking', 491),
 ('car', 491),
 ('george', 490),
 ('perfectly', 490),
 ('across', 489),
 ('team', 489),
 ('eye', 489),
 ('sequence', 489),
 ('room', 488),
 ('due', 488),
 ('among', 488),
 ('serious', 488),
 ('powerful', 488),
 ('strange', 487),
 ('order', 487),
 ('cannot', 487),
 ('b', 487),
 ('beauty', 486),
 ('famous', 485),
 ('happened', 484),
 ('tries', 484),
 ('herself', 484),
 ('myself', 484),
 ('class', 483),
 ('four', 482),
 ('cool', 481),
 ('release', 479),
 ('anyway', 479),
 ('theme', 479),
 ('opening', 478),
 ('entertainment', 477),
 ('slow', 475),
 ('ends', 475),
 ('unique', 475),
 ('exactly', 475),
 ('easily', 474),
 ('level', 474),
 ('o', 474),
 ('red', 474),
 ('interest', 472),
 ('happen', 471),
 ('crime', 470),
 ('viewing', 468),
 ('sets', 467),
 ('memorable', 467),
 ('stop', 466),
 ('group', 466),
 ('problems', 463),
 ('dance', 463),
 ('working', 463),
 ('sister', 463),
 ('message', 463),
 ('knew', 462),
 ('mystery', 461),
 ('nature', 461),
 ('bring', 460),
 ('believable', 459),
 ('thinking', 459),
 ('brought', 459),
 ('mostly', 458),
 ('disney', 457),
 ('couldn', 457),
 ('society', 456),
 ('lady', 455),
 ('within', 455),
 ('blood', 454),
 ('parents', 453),
 ('upon', 453),
 ('viewers', 453),
 ('meets', 452),
 ('form', 452),
 ('peter', 452),
 ('tom', 452),
 ('usually', 452),
 ('soundtrack', 452),
 ('local', 450),
 ('certain', 448),
 ('follow', 448),
 ('whether', 447),
 ('possible', 446),
 ('emotional', 445),
 ('killed', 444),
 ('above', 444),
 ('de', 444),
 ('god', 443),
 ('middle', 443),
 ('needs', 442),
 ('happens', 442),
 ('flick', 442),
 ('masterpiece', 441),
 ('period', 440),
 ('major', 440),
 ('named', 439),
 ('haven', 439),
 ('particular', 438),
 ('th', 438),
 ('earth', 437),
 ('feature', 437),
 ('stand', 436),
 ('words', 435),
 ('typical', 435),
 ('elements', 433),
 ('obviously', 433),
 ('romance', 431),
 ('jane', 430),
 ('yourself', 427),
 ('showing', 427),
 ('brings', 426),
 ('fantasy', 426),
 ('guess', 423),
 ('america', 423),
 ('unfortunately', 422),
 ('huge', 422),
 ('indeed', 421),
 ('running', 421),
 ('talent', 420),
 ('stage', 419),
 ('started', 418),
 ('leads', 417),
 ('sweet', 417),
 ('japanese', 417),
 ('poor', 416),
 ('deal', 416),
 ('incredible', 413),
 ('personal', 413),
 ('fast', 412),
 ('became', 410),
 ('deep', 410),
 ('hours', 409),
 ('giving', 408),
 ('nearly', 408),
 ('dream', 408),
 ('clearly', 407),
 ('turned', 407),
 ('obvious', 406),
 ('near', 406),
 ('cut', 405),
 ('surprise', 405),
 ('era', 404),
 ('body', 404),
 ('hour', 403),
 ('female', 403),
 ('five', 403),
 ('note', 399),
 ('learn', 398),
 ('truth', 398),
 ('except', 397),
 ('feels', 397),
 ('match', 397),
 ('tony', 397),
 ('filmed', 394),
 ('clear', 394),
 ('complete', 394),
 ('street', 393),
 ('eventually', 393),
 ('keeps', 393),
 ('older', 393),
 ('lots', 393),
 ('buy', 392),
 ('william', 391),
 ('stewart', 391),
 ('fall', 390),
 ('joe', 390),
 ('meet', 390),
 ('unlike', 389),
 ('talking', 389),
 ('shots', 389),
 ('rating', 389),
 ('difficult', 389),
 ('dramatic', 388),
 ('means', 388),
 ('situation', 386),
 ('wonder', 386),
 ('present', 386),
 ('appears', 386),
 ('subject', 386),
 ('comments', 385),
 ('general', 383),
 ('sequences', 383),
 ('lee', 383),
 ('points', 382),
 ('earlier', 382),
 ('gone', 379),
 ('check', 379),
 ('suspense', 378),
 ('recommended', 378),
 ('ten', 378),
 ('third', 377),
 ('business', 377),
 ('talk', 375),
 ('leaves', 375),
 ('beyond', 375),
 ('portrayal', 374),
 ('beautifully', 373),
 ('single', 372),
 ('bill', 372),
 ('plenty', 371),
 ('word', 371),
 ('whom', 370),
 ('falls', 370),
 ('scary', 369),
 ('non', 369),
 ('figure', 369),
 ('battle', 369),
 ('using', 368),
 ('return', 368),
 ('doubt', 367),
 ('add', 367),
 ('hear', 366),
 ('solid', 366),
 ('success', 366),
 ('jokes', 365),
 ('oh', 365),
 ('touching', 365),
 ('political', 365),
 ('hell', 364),
 ('awesome', 364),
 ('boys', 364),
 ('sexual', 362),
 ('recently', 362),
 ('dog', 362),
 ('please', 361),
 ('wouldn', 361),
 ('straight', 361),
 ('features', 361),
 ('forget', 360),
 ('setting', 360),
 ('lack', 360),
 ('married', 359),
 ('mark', 359),
 ('social', 357),
 ('interested', 356),
 ('adventure', 356),
 ('actual', 355),
 ('terrific', 355),
 ('sees', 355),
 ('brothers', 355),
 ('move', 354),
 ('call', 354),
 ('various', 353),
 ('theater', 353),
 ('dr', 353),
 ('animated', 352),
 ('western', 351),
 ('baby', 350),
 ('space', 350),
 ('leading', 348),
 ('disappointed', 348),
 ('portrayed', 346),
 ('aren', 346),
 ('screenplay', 345),
 ('smith', 345),
 ('towards', 344),
 ('hate', 344),
 ('noir', 343),
 ('outstanding', 342),
 ('decent', 342),
 ('kelly', 342),
 ('directors', 341),
 ('journey', 341),
 ('none', 340),
 ('looked', 340),
 ('effective', 340),
 ('storyline', 339),
 ('caught', 339),
 ('sci', 339),
 ('fi', 339),
 ('cold', 339),
 ('mary', 339),
 ('rich', 338),
 ('charming', 338),
 ('popular', 337),
 ('rare', 337),
 ('manages', 337),
 ('harry', 337),
 ('spirit', 336),
 ('appreciate', 335),
 ('open', 335),
 ('moves', 334),
 ('basically', 334),
 ('acted', 334),
 ('inside', 333),
 ('boring', 333),
 ('century', 333),
 ('mention', 333),
 ('deserves', 333),
 ('subtle', 333),
 ('pace', 333),
 ('familiar', 332),
 ('background', 332),
 ('ben', 331),
 ('creepy', 330),
 ('supposed', 330),
 ('secret', 329),
 ('die', 328),
 ('jim', 328),
 ('question', 327),
 ('effect', 327),
 ('natural', 327),
 ('impressive', 326),
 ('rate', 326),
 ('language', 326),
 ('saying', 325),
 ('intelligent', 325),
 ('telling', 324),
 ('realize', 324),
 ('material', 324),
 ('scott', 324),
 ('singing', 323),
 ('dancing', 322),
 ('visual', 321),
 ('adult', 321),
 ('imagine', 321),
 ('kept', 320),
 ('office', 320),
 ('uses', 319),
 ('pure', 318),
 ('wait', 318),
 ('stunning', 318),
 ('review', 317),
 ('previous', 317),
 ('copy', 317),
 ('seriously', 317),
 ('reading', 316),
 ('create', 316),
 ('hot', 316),
 ('created', 316),
 ('magic', 316),
 ('somehow', 316),
 ('stay', 315),
 ('attempt', 315),
 ('escape', 315),
 ('crazy', 315),
 ('air', 315),
 ('frank', 315),
 ('hands', 314),
 ('filled', 313),
 ('expected', 312),
 ('average', 312),
 ('surprisingly', 312),
 ('complex', 311),
 ('quickly', 310),
 ('successful', 310),
 ('studio', 310),
 ('plus', 309),
 ('male', 309),
 ('co', 307),
 ('images', 306),
 ('casting', 306),
 ('following', 306),
 ('minute', 306),
 ('exciting', 306),
 ('members', 305),
 ('follows', 305),
 ('themes', 305),
 ('german', 305),
 ('reasons', 305),
 ('e', 305),
 ('touch', 304),
 ('edge', 304),
 ('free', 304),
 ('cute', 304),
 ('genius', 304),
 ('outside', 303),
 ('reviews', 302),
 ('admit', 302),
 ('ok', 302),
 ('younger', 302),
 ('fighting', 301),
 ('odd', 301),
 ('master', 301),
 ('recent', 300),
 ('thanks', 300),
 ('break', 300),
 ('comment', 300),
 ('apart', 299),
 ('emotions', 298),
 ('lovely', 298),
 ('begin', 298),
 ('doctor', 297),
 ('party', 297),
 ('italian', 297),
 ('la', 296),
 ('missed', 296),
 ...]

In [11]:
pos_neg_ratios = Counter()

for term,cnt in list(total_counts.most_common()):
    if(cnt > 100):
        pos_neg_ratio = positive_counts[term] / float(negative_counts[term]+1)
        pos_neg_ratios[term] = pos_neg_ratio

for word,ratio in pos_neg_ratios.most_common():
    if(ratio > 1):
        pos_neg_ratios[word] = np.log(ratio)
    else:
        pos_neg_ratios[word] = -np.log((1 / (ratio+0.01)))

In [12]:
# words most frequently seen in a review with a "POSITIVE" label
pos_neg_ratios.most_common()


Out[12]:
[('edie', 4.6913478822291435),
 ('paulie', 4.0775374439057197),
 ('felix', 3.1527360223636558),
 ('polanski', 2.8233610476132043),
 ('matthau', 2.8067217286092401),
 ('victoria', 2.6810215287142909),
 ('mildred', 2.6026896854443837),
 ('gandhi', 2.5389738710582761),
 ('flawless', 2.451005098112319),
 ('superbly', 2.2600254785752498),
 ('perfection', 2.1594842493533721),
 ('astaire', 2.1400661634962708),
 ('captures', 2.0386195471595809),
 ('voight', 2.0301704926730531),
 ('wonderfully', 2.0218960560332353),
 ('powell', 1.9783454248084671),
 ('brosnan', 1.9547990964725592),
 ('lily', 1.9203768470501485),
 ('bakshi', 1.9029851043382795),
 ('lincoln', 1.9014583864844796),
 ('refreshing', 1.8551812956655511),
 ('breathtaking', 1.8481124057791867),
 ('bourne', 1.8478489358790986),
 ('lemmon', 1.8458266904983307),
 ('delightful', 1.8002701588959635),
 ('flynn', 1.7996646487351682),
 ('andrews', 1.7764919970972666),
 ('homer', 1.7692866133759964),
 ('beautifully', 1.7626953362841438),
 ('soccer', 1.7578579175523736),
 ('elvira', 1.7397031072720019),
 ('underrated', 1.7197859696029656),
 ('gripping', 1.7165360479904674),
 ('superb', 1.7091514458966952),
 ('delight', 1.6714733033535532),
 ('welles', 1.6677068205580761),
 ('sadness', 1.663505133704376),
 ('sinatra', 1.6389967146756448),
 ('touching', 1.637217476541176),
 ('timeless', 1.62924053973028),
 ('macy', 1.6211339521972916),
 ('unforgettable', 1.6177367152487956),
 ('favorites', 1.6158688027643908),
 ('stewart', 1.6119987332957739),
 ('sullivan', 1.6094379124341003),
 ('extraordinary', 1.6094379124341003),
 ('hartley', 1.6094379124341003),
 ('brilliantly', 1.5950491749820008),
 ('friendship', 1.5677652160335325),
 ('wonderful', 1.5645425925262093),
 ('palma', 1.5553706911638245),
 ('magnificent', 1.54663701119507),
 ('finest', 1.5462590108125689),
 ('jackie', 1.5439233053234738),
 ('ritter', 1.5404450409471491),
 ('tremendous', 1.5184661342283736),
 ('freedom', 1.5091151908062312),
 ('fantastic', 1.5048433868558566),
 ('terrific', 1.5026699370083942),
 ('noir', 1.493925025312256),
 ('sidney', 1.493925025312256),
 ('outstanding', 1.4910053152089213),
 ('pleasantly', 1.4894785973551214),
 ('mann', 1.4894785973551214),
 ('nancy', 1.488077055429833),
 ('marie', 1.4825711915553104),
 ('marvelous', 1.4739999415389962),
 ('excellent', 1.4647538505723599),
 ('ruth', 1.4596256342054401),
 ('stanwyck', 1.4412101187160054),
 ('widmark', 1.4350845252893227),
 ('splendid', 1.4271163556401458),
 ('chan', 1.423108334242607),
 ('exceptional', 1.4201959127955721),
 ('tender', 1.410986973710262),
 ('gentle', 1.4078005663408544),
 ('poignant', 1.4022947024663317),
 ('gem', 1.3932148039644643),
 ('amazing', 1.3919815802404802),
 ('chilling', 1.3862943611198906),
 ('fisher', 1.3862943611198906),
 ('davies', 1.3862943611198906),
 ('captivating', 1.3862943611198906),
 ('darker', 1.3652409519220583),
 ('april', 1.3499267169490159),
 ('kelly', 1.3461743673304654),
 ('blake', 1.3418425985490567),
 ('overlooked', 1.329135947279942),
 ('ralph', 1.32818673031261),
 ('bette', 1.3156767939059373),
 ('hoffman', 1.3150668518315229),
 ('cole', 1.3121863889661687),
 ('shines', 1.3049487216659381),
 ('powerful', 1.2999662776313934),
 ('notch', 1.2950456896547455),
 ('remarkable', 1.2883688239495823),
 ('pitt', 1.286210902562908),
 ('winters', 1.2833463918674481),
 ('vivid', 1.2762934659055623),
 ('gritty', 1.2757524867200667),
 ('giallo', 1.2745029551317739),
 ('portrait', 1.2704625455947689),
 ('innocence', 1.2694300209805796),
 ('psychiatrist', 1.2685113254635072),
 ('favorite', 1.2668956297860055),
 ('ensemble', 1.2656663733312759),
 ('stunning', 1.2622417124499117),
 ('burns', 1.259880436264232),
 ('garbo', 1.258954938743289),
 ('barbara', 1.2580400255962119),
 ('philip', 1.2527629684953681),
 ('panic', 1.2527629684953681),
 ('holly', 1.2527629684953681),
 ('carol', 1.2481440226390734),
 ('perfect', 1.246742480713785),
 ('appreciated', 1.2462482874741743),
 ('favourite', 1.2411123512753928),
 ('journey', 1.2367626271489269),
 ('rural', 1.235471471385307),
 ('bond', 1.2321436812926323),
 ('builds', 1.2305398317106577),
 ('brilliant', 1.2287554137664785),
 ('brooklyn', 1.2286654169163074),
 ('von', 1.225175011976539),
 ('recommended', 1.2163953243244932),
 ('unfolds', 1.2163953243244932),
 ('daniel', 1.20215296760895),
 ('perfectly', 1.1971931173405572),
 ('crafted', 1.1962507582320256),
 ('prince', 1.1939224684724346),
 ('troubled', 1.192138346678933),
 ('consequences', 1.1865810616140668),
 ('haunting', 1.1814999484738773),
 ('cinderella', 1.180052620608284),
 ('alexander', 1.1759989522835299),
 ('emotions', 1.1753049094563641),
 ('boxing', 1.1735135968412274),
 ('subtle', 1.1734135017508081),
 ('curtis', 1.1649873576129823),
 ('rare', 1.1566438362402944),
 ('loved', 1.1563661500586044),
 ('daughters', 1.1526795099383853),
 ('courage', 1.1438688802562305),
 ('dentist', 1.1426722784621401),
 ('highly', 1.1420208631618658),
 ('nominated', 1.1409146683587992),
 ('tony', 1.1397491942285991),
 ('draws', 1.1325138403437911),
 ('everyday', 1.1306150197542835),
 ('contrast', 1.1284652518177909),
 ('cried', 1.1213405397456659),
 ('fabulous', 1.1210851445201684),
 ('ned', 1.120591195386885),
 ('fay', 1.120591195386885),
 ('emma', 1.1184149159642893),
 ('sensitive', 1.113318436057805),
 ('smooth', 1.1089750757036563),
 ('dramas', 1.1080910326226534),
 ('today', 1.1050431789984001),
 ('helps', 1.1023091505494358),
 ('inspiring', 1.0986122886681098),
 ('jimmy', 1.0937696641923216),
 ('awesome', 1.0931328229034842),
 ('unique', 1.0881409888008142),
 ('tragic', 1.0871835928444868),
 ('intense', 1.0870514662670339),
 ('stellar', 1.0857088838322018),
 ('rival', 1.0822184788924332),
 ('provides', 1.0797081340289569),
 ('depression', 1.0782034170369026),
 ('shy', 1.0775588794702773),
 ('carrie', 1.076139432816051),
 ('blend', 1.0753554265038423),
 ('hank', 1.0736109864626924),
 ('diana', 1.0726368022648489),
 ('adorable', 1.0726368022648489),
 ('unexpected', 1.0722255334949147),
 ('achievement', 1.0668635903535293),
 ('bettie', 1.0663514264498881),
 ('happiness', 1.0632729222228008),
 ('glorious', 1.0608719606852626),
 ('davis', 1.0541605260972757),
 ('terrifying', 1.0525211814678428),
 ('beauty', 1.050410186850232),
 ('ideal', 1.0479685558493548),
 ('fears', 1.0467872208035236),
 ('hong', 1.0438040521731147),
 ('seasons', 1.0433496099930604),
 ('fascinating', 1.0414538748281612),
 ('carries', 1.0345904299031787),
 ('satisfying', 1.0321225473992768),
 ('definite', 1.0319209141694374),
 ('touched', 1.0296194171811581),
 ('greatest', 1.0248947127715422),
 ('creates', 1.0241097613701886),
 ('aunt', 1.023388867430522),
 ('walter', 1.022328983918479),
 ('spectacular', 1.0198314108149955),
 ('portrayal', 1.0189810189761024),
 ('ann', 1.0127808528183286),
 ('enterprise', 1.0116009116784799),
 ('musicals', 1.0096648026516135),
 ('deeply', 1.0094845087721023),
 ('incredible', 1.0061677561461084),
 ('mature', 1.0060195018402847),
 ('triumph', 0.99682959435816731),
 ('margaret', 0.99682959435816731),
 ('navy', 0.99493385919326827),
 ('harry', 0.99176919305006062),
 ('lucas', 0.990398704027877),
 ('sweet', 0.98966110487955483),
 ('joey', 0.98794672078059009),
 ('oscar', 0.98721905111049713),
 ('balance', 0.98649499054740353),
 ('warm', 0.98485340331145166),
 ('ages', 0.98449898190068863),
 ('guilt', 0.98082925301172619),
 ('glover', 0.98082925301172619),
 ('carrey', 0.98082925301172619),
 ('learns', 0.97881108885548895),
 ('unusual', 0.97788374278196932),
 ('sons', 0.97777581552483595),
 ('complex', 0.97761897738147796),
 ('essence', 0.97753435711487369),
 ('brazil', 0.9769153536905899),
 ('widow', 0.97650959186720987),
 ('solid', 0.97537964824416146),
 ('beautiful', 0.97326301262841053),
 ('holmes', 0.97246100334120955),
 ('awe', 0.97186058302896583),
 ('vhs', 0.97116734209998934),
 ('eerie', 0.97116734209998934),
 ('lonely', 0.96873720724669754),
 ('grim', 0.96873720724669754),
 ('sport', 0.96825047080486615),
 ('debut', 0.96508089604358704),
 ('destiny', 0.96343751029985703),
 ('thrillers', 0.96281074750904794),
 ('tears', 0.95977584381389391),
 ('rose', 0.95664202739772253),
 ('feelings', 0.95551144502743635),
 ('ginger', 0.95551144502743635),
 ('winning', 0.95471810900804055),
 ('stanley', 0.95387344302319799),
 ('cox', 0.95343027882361187),
 ('paris', 0.95278479030472663),
 ('heart', 0.95238806924516806),
 ('hooked', 0.95155887071161305),
 ('comfortable', 0.94803943018873538),
 ('mgm', 0.94446160884085151),
 ('masterpiece', 0.94155039863339296),
 ('themes', 0.94118828349588235),
 ('danny', 0.93967118051821874),
 ('anime', 0.93378388932167222),
 ('perry', 0.93328830824272613),
 ('joy', 0.93301752567946861),
 ('lovable', 0.93081883243706487),
 ('mysteries', 0.92953595862417571),
 ('hal', 0.92953595862417571),
 ('louis', 0.92871325187271225),
 ('charming', 0.92520609553210742),
 ('urban', 0.92367083917177761),
 ('allows', 0.92183091224977043),
 ('impact', 0.91815814604895041),
 ('italy', 0.91629073187415511),
 ('gradually', 0.91629073187415511),
 ('lifestyle', 0.91629073187415511),
 ('spy', 0.91289514287301687),
 ('treat', 0.91193342650519937),
 ('subsequent', 0.91056005716517008),
 ('kennedy', 0.90981821736853763),
 ('loving', 0.90967549275543591),
 ('surprising', 0.90937028902958128),
 ('quiet', 0.90648673177753425),
 ('winter', 0.90624039602065365),
 ('reveals', 0.90490540964902977),
 ('raw', 0.90445627422715225),
 ('funniest', 0.90078654533818991),
 ('pleased', 0.89994159387262562),
 ('norman', 0.89994159387262562),
 ('thief', 0.89874642222324552),
 ('season', 0.89827222637147675),
 ('secrets', 0.89794159320595857),
 ('colorful', 0.89705936994626756),
 ('highest', 0.8967461358011849),
 ('compelling', 0.89462923509297576),
 ('danes', 0.89248008318043659),
 ('castle', 0.88967708335606499),
 ('kudos', 0.88889175768604067),
 ('great', 0.88810470901464589),
 ('baseball', 0.88730319500090271),
 ('subtitles', 0.88730319500090271),
 ('bleak', 0.88730319500090271),
 ('winner', 0.88643776872447388),
 ('tragedy', 0.88563699078315261),
 ('todd', 0.88551907320740142),
 ('nicely', 0.87924946019380601),
 ('arthur', 0.87546873735389985),
 ('essential', 0.87373111745535925),
 ('gorgeous', 0.8731725250935497),
 ('fonda', 0.87294029100054127),
 ('eastwood', 0.87139541196626402),
 ('focuses', 0.87082835779739776),
 ('enjoyed', 0.87070195951624607),
 ('natural', 0.86997924506912838),
 ('intensity', 0.86835126958503595),
 ('witty', 0.86824103423244681),
 ('rob', 0.8642954367557748),
 ('worlds', 0.86377269759070874),
 ('health', 0.86113891179907498),
 ('magical', 0.85953791528170564),
 ('deeper', 0.85802182375017932),
 ('lucy', 0.85618680780444956),
 ('moving', 0.85566611005772031),
 ('lovely', 0.85290640004681306),
 ('purple', 0.8513711857748395),
 ('memorable', 0.84801189112086062),
 ('sings', 0.84729786038720367),
 ('craig', 0.84342938360928321),
 ('modesty', 0.84342938360928321),
 ('relate', 0.84326559685926517),
 ('episodes', 0.84223712084137292),
 ('strong', 0.84167135777060931),
 ('smith', 0.83959811108590054),
 ('tear', 0.83704136022001441),
 ('apartment', 0.83333115290549531),
 ('princess', 0.83290912293510388),
 ('disagree', 0.83290912293510388),
 ('kung', 0.83173334384609199),
 ('adventure', 0.83150561393278388),
 ('columbo', 0.82667857318446791),
 ('jake', 0.82667857318446791),
 ('adds', 0.82485652591452319),
 ('hart', 0.82472353834866463),
 ('strength', 0.82417544296634937),
 ('realizes', 0.82360006895738058),
 ('dave', 0.8232003088081431),
 ('childhood', 0.82208086393583857),
 ('forbidden', 0.81989888619908913),
 ('tight', 0.81883539572344199),
 ('surreal', 0.8178506590609026),
 ('manager', 0.81770990320170756),
 ('dancer', 0.81574950265227764),
 ('studios', 0.81093021621632877),
 ('con', 0.81093021621632877),
 ('miike', 0.80821651034473263),
 ('realistic', 0.80807714723392232),
 ('explicit', 0.80792269515237358),
 ('kurt', 0.8060875917405409),
 ('traditional', 0.80535917116687328),
 ('deals', 0.80535917116687328),
 ('holds', 0.80493858654806194),
 ('carl', 0.80437281567016972),
 ('touches', 0.80396154690023547),
 ('gene', 0.80314807577427383),
 ('albert', 0.8027669055771679),
 ('abc', 0.80234647252493729),
 ('cry', 0.80011930011211307),
 ('sides', 0.7995275841185171),
 ('develops', 0.79850769621777162),
 ('eyre', 0.79850769621777162),
 ('dances', 0.79694397424158891),
 ('oscars', 0.79633141679517616),
 ('legendary', 0.79600456599965308),
 ('hearted', 0.79492987486988764),
 ('importance', 0.79492987486988764),
 ('portraying', 0.79356592830699269),
 ('impressed', 0.79258107754813223),
 ('waters', 0.79112758892014912),
 ('empire', 0.79078565012386137),
 ('edge', 0.789774016249017),
 ('jean', 0.78845736036427028),
 ('environment', 0.78845736036427028),
 ('sentimental', 0.7864791203521645),
 ('captured', 0.78623760362595729),
 ('styles', 0.78592891401091158),
 ('daring', 0.78592891401091158),
 ('frank', 0.78275933924963248),
 ('tense', 0.78275933924963248),
 ('backgrounds', 0.78275933924963248),
 ('matches', 0.78275933924963248),
 ('gothic', 0.78209466657644144),
 ('sharp', 0.7814397877056235),
 ('achieved', 0.78015855754957497),
 ('court', 0.77947526404844247),
 ('steals', 0.7789140023173704),
 ('rules', 0.77844476107184035),
 ('colors', 0.77684619943659217),
 ('reunion', 0.77318988823348167),
 ('covers', 0.77139937745969345),
 ('tale', 0.77010822169607374),
 ('rain', 0.7683706017975328),
 ('denzel', 0.76804848873306297),
 ('stays', 0.76787072675588186),
 ('blob', 0.76725515271366718),
 ('maria', 0.76214005204689672),
 ('conventional', 0.76214005204689672),
 ('fresh', 0.76158434211317383),
 ('midnight', 0.76096977689870637),
 ('landscape', 0.75852993982279704),
 ('animated', 0.75768570169751648),
 ('titanic', 0.75666058628227129),
 ('sunday', 0.75666058628227129),
 ('spring', 0.7537718023763802),
 ('cagney', 0.7537718023763802),
 ('enjoyable', 0.75246375771636476),
 ('immensely', 0.75198768058287868),
 ('sir', 0.7507762933965817),
 ('nevertheless', 0.75067102469813185),
 ('driven', 0.74994477895307854),
 ('performances', 0.74883252516063137),
 ('memories', 0.74721440183022114),
 ('nowadays', 0.74721440183022114),
 ('simple', 0.74641420974143258),
 ('golden', 0.74533293373051557),
 ('leslie', 0.74533293373051557),
 ('lovers', 0.74497224842453125),
 ('relationship', 0.74484232345601786),
 ('supporting', 0.74357803418683721),
 ('che', 0.74262723782331497),
 ('packed', 0.7410032017375805),
 ('trek', 0.74021469141793106),
 ('provoking', 0.73840377214806618),
 ('strikes', 0.73759894313077912),
 ('depiction', 0.73682224406260699),
 ('emotional', 0.73678211645681524),
 ('secretary', 0.7366322924996842),
 ('influenced', 0.73511137965897755),
 ('florida', 0.73511137965897755),
 ('germany', 0.73288750920945944),
 ('brings', 0.73142936713096229),
 ('lewis', 0.73129894652432159),
 ('elderly', 0.73088750854279239),
 ('owner', 0.72743625403857748),
 ('streets', 0.72666987259858895),
 ('henry', 0.72642196944481741),
 ('portrays', 0.72593700338293632),
 ('bears', 0.7252354951114458),
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 ('caught', 0.44610275383999071),
 ('hamlet', 0.44558510189758965),
 ('chinese', 0.44507424620321018),
 ('welcome', 0.44438052435783792),
 ('birth', 0.44368632092836219),
 ('represents', 0.44320543609101143),
 ('puts', 0.44279106572085081),
 ('visuals', 0.44183275227903923),
 ('fame', 0.44183275227903923),
 ('closer', 0.44183275227903923),
 ('web', 0.44183275227903923),
 ('criminal', 0.4412745608048752),
 ('minor', 0.4409224199448939),
 ('jon', 0.44086703515908027),
 ('liked', 0.44074991514020723),
 ('restaurant', 0.44031183943833246),
 ('de', 0.43983275161237217),
 ('flaws', 0.43983275161237217),
 ('searching', 0.4393666597838457),
 ('rap', 0.43891304217570443),
 ('light', 0.43884433018199892),
 ('elizabeth', 0.43872232986464682),
 ('marry', 0.43861731542506488),
 ('learned', 0.43825493093115531),
 ('controversial', 0.43825493093115531),
 ('oz', 0.43825493093115531),
 ('slowly', 0.43785660389939979),
 ('comedic', 0.43721380642274466),
 ('wayne', 0.43721380642274466),
 ('thrilling', 0.43721380642274466),
 ('bridge', 0.43721380642274466),
 ('married', 0.43658501682196887),
 ('nazi', 0.4361020775700542),
 ('murder', 0.4353180712578455),
 ('physical', 0.4353180712578455),
 ('johnny', 0.43483971678806865),
 ('michelle', 0.43445264498141672),
 ('wallace', 0.43403848055222038),
 ('comedies', 0.43395706390247063),
 ('silent', 0.43395706390247063),
 ('played', 0.43387244114515305),
 ('international', 0.43363598507486073),
 ('vision', 0.43286408229627887),
 ('intelligent', 0.43196704885367099),
 ('shop', 0.43078291609245434),
 ('also', 0.43036720209769169),
 ('levels', 0.4302451371066513),
 ('miss', 0.43006426712153217),
 ('movement', 0.4295626596872249),
 ...]

In [13]:
# words most frequently seen in a review with a "NEGATIVE" label
list(reversed(pos_neg_ratios.most_common()))[0:30]


Out[13]:
[('boll', -4.0778152602708904),
 ('uwe', -3.9218753018711578),
 ('seagal', -3.3202501058581921),
 ('unwatchable', -3.0269848170580955),
 ('stinker', -2.9876839403711624),
 ('mst', -2.7753833211707968),
 ('incoherent', -2.7641396677532537),
 ('unfunny', -2.5545257844967644),
 ('waste', -2.4907515123361046),
 ('blah', -2.4475792789485005),
 ('horrid', -2.3715779644809971),
 ('pointless', -2.3451073877136341),
 ('atrocious', -2.3187369339642556),
 ('redeeming', -2.2667790015910296),
 ('prom', -2.2601040980178784),
 ('drivel', -2.2476029585766928),
 ('lousy', -2.2118080125207054),
 ('worst', -2.1930856334332267),
 ('laughable', -2.172468615469592),
 ('awful', -2.1385076866397488),
 ('poorly', -2.1326133844207011),
 ('wasting', -2.1178155545614512),
 ('remotely', -2.111046881095167),
 ('existent', -2.0024805005437076),
 ('boredom', -1.9241486572738005),
 ('miserably', -1.9216610938019989),
 ('sucks', -1.9166645809588516),
 ('uninspired', -1.9131499212248517),
 ('lame', -1.9117232884159072),
 ('insult', -1.9085323769376259)]

Transforming Text into Numbers


In [14]:
from IPython.display import Image

review = "This was a horrible, terrible movie."

Image(filename='sentiment_network.png')


Out[14]:

In [15]:
review = "The movie was excellent"

Image(filename='sentiment_network_pos.png')


Out[15]:

Project 2: Creating the Input/Output Data


In [16]:
vocab = set(total_counts.keys())
vocab_size = len(vocab)
print(vocab_size)


74074

In [17]:
list(vocab)


Out[17]:
['',
 'smattering',
 'fifth',
 'francie',
 'gadg',
 'watterman',
 'macmahone',
 'deliverance',
 'sluizer',
 'distraction',
 'chiyo',
 'illustrative',
 'stoll',
 'linwood',
 'vicenzo',
 'ferrel',
 'torments',
 'signalled',
 'itz',
 'clawed',
 'subscribes',
 'konec',
 'heeds',
 'telemundo',
 'rasps',
 'bocaccio',
 'aragami',
 'carolingians',
 'thoughts',
 'colloquialisms',
 'weis',
 'clunes',
 'idolatry',
 'conceptual',
 'bustiest',
 'orderd',
 'dreadful',
 'toucan',
 'latterday',
 'homem',
 'stayover',
 'elapsed',
 'roadster',
 'satanists',
 'friend',
 'africa',
 'irritations',
 'kindler',
 'townsell',
 'access',
 'previews',
 'hulkamaniacs',
 'invalidity',
 'dogpatch',
 'fminin',
 'disapproves',
 'impotent',
 'frenchwoman',
 'fod',
 'americanism',
 'packenham',
 'alaskey',
 'lenghth',
 'opulent',
 'garbagemen',
 'jobyna',
 'fav',
 'choreographers',
 'ghibli',
 'revelation',
 'appease',
 'congratulatory',
 'filler',
 'optics',
 'tsing',
 'niedhart',
 'commanders',
 'fortunantely',
 'misunderstanding',
 'eliana',
 'indigestion',
 'sparingly',
 'aragorn',
 'mimbos',
 'puertorican',
 'bhajpai',
 'grazia',
 'pitch',
 'felicities',
 'falangists',
 'africans',
 'dole',
 'ronnies',
 'ix',
 'adventuresome',
 'cbs',
 'immigrant',
 'cinders',
 'feinnnes',
 'mxyzptlk',
 'meaty',
 'classicks',
 'fte',
 'piecing',
 'msb',
 'dogs',
 'musts',
 'fenway',
 'jeopardizes',
 'boarders',
 'attendant',
 'burketsville',
 'pilgrimage',
 'surpassing',
 'critique',
 'bluffs',
 'voluntarily',
 'colonials',
 'lengthen',
 'machinery',
 'stonking',
 'ventures',
 'dil',
 'melvil',
 'straddle',
 'sexshooter',
 'dystopian',
 'butterfly',
 'encompasses',
 'fending',
 'mundane',
 'horseback',
 'spinsters',
 'thurman',
 'crewmate',
 'risky',
 'entirety',
 'fellowes',
 'yevgeni',
 'jest',
 'scriptors',
 'parole',
 'parslow',
 'addicted',
 'lai',
 'hospitality',
 'buster',
 'fleck',
 'hobbling',
 'favorit',
 'dylan',
 'collectors',
 'secreteary',
 'strate',
 'seriousuly',
 'orignal',
 'burden',
 'downplaying',
 'tortuga',
 'appearence',
 'trintignant',
 'cutlet',
 'ance',
 'baddness',
 'patroni',
 'bohemia',
 'kollo',
 'word',
 'misinterpretated',
 'hims',
 'adorn',
 'doggie',
 'boulanger',
 'verdict',
 'aretha',
 'abundant',
 'ryaba',
 'beullar',
 'sexier',
 'cree',
 'implement',
 'escargot',
 'trolley',
 'schlettow',
 'cheyney',
 'rumbler',
 'fan',
 'jekyll',
 'belgrad',
 'oireland',
 'heterogeneous',
 'baskets',
 'sponsorship',
 'wolverine',
 'destines',
 'com',
 'everone',
 'sedimentation',
 'frolics',
 'lauderdale',
 'ungureanu',
 'geroge',
 'spiritual',
 'transmuted',
 'cpt',
 'descas',
 'deja',
 'luise',
 'humped',
 'underline',
 'gato',
 'processed',
 'succession',
 'male',
 'scumbags',
 'suicides',
 'delay',
 'staccato',
 'admixtures',
 'plonk',
 'fry',
 'lufft',
 'fps',
 'daym',
 'sailed',
 'disporting',
 'insulates',
 'cockiness',
 'ever',
 'diminishing',
 'sweetish',
 'exercises',
 'unspun',
 'borring',
 'sleek',
 'spazz',
 'bedrooms',
 'sufficed',
 'melds',
 'whatsername',
 'debunking',
 'databanks',
 'restrictions',
 'tribe',
 'hbk',
 'synchronised',
 'resneck',
 'supermarkets',
 'lunge',
 'damagingly',
 'giulia',
 'afoul',
 'variety',
 'buck',
 'rewinded',
 'shipbuilding',
 'internship',
 'coulier',
 'dicked',
 'daniell',
 'option',
 'catholicism',
 'marmelstein',
 'gallipoli',
 'sorts',
 'detects',
 'xia',
 'accusation',
 'lache',
 'geometrically',
 'sadistically',
 'greenblatt',
 'counteract',
 'disclosing',
 'prosecuting',
 'triumphed',
 'veddy',
 'franic',
 'madman',
 'frets',
 'trasforms',
 'telegraph',
 'gins',
 'yardstick',
 'rusting',
 'miles',
 'flitted',
 'troyes',
 'deify',
 'timers',
 'nearest',
 'gorbunov',
 'bsg',
 'gated',
 'twoddle',
 'impairment',
 'radiantly',
 'puppetry',
 'borough',
 'remedios',
 'commishioner',
 'wrestling',
 'arther',
 'rasputin',
 'plea',
 'colony',
 'noble',
 'empress',
 'villainies',
 'victimizing',
 'calloni',
 'anayways',
 'neatly',
 'fireproof',
 'koenigsegg',
 'covington',
 'morons',
 'absoutley',
 'gifting',
 'enlighten',
 'kaminska',
 'humorless',
 'unhurried',
 'hellish',
 'occasionally',
 'alejandra',
 'haden',
 'boreham',
 'cronenberg',
 'missi',
 'philippa',
 'bridge',
 'rochefort',
 'directorship',
 'discussable',
 'latently',
 'investor',
 'liggin',
 'abhi',
 'monotony',
 'dumb',
 'luggage',
 'clashes',
 'memorializing',
 'flan',
 'barril',
 'uncles',
 'spectacular',
 'joeseph',
 'taboo',
 'lifeforms',
 'demme',
 'attributing',
 'kinka',
 'beetch',
 'fledged',
 'cigarettes',
 'discplines',
 'gialli',
 'asuka',
 'roosevelt',
 'criticize',
 'bippity',
 'persifina',
 'jaundiced',
 'superimposes',
 'dismissable',
 'jang',
 'franz',
 'partes',
 'parkey',
 'uncomically',
 'resplendent',
 'bravi',
 'rutina',
 'rosenbaum',
 'mouton',
 'bola',
 'clarice',
 'brigham',
 'embarrassly',
 'tonga',
 'churlishly',
 'unbelievable',
 'rosco',
 'misquotes',
 'arkan',
 'streetfight',
 'snoring',
 'grissom',
 'choristers',
 'investigatory',
 'juarezon',
 'dilution',
 'isaaks',
 'loooonnnnng',
 'saxaphone',
 'paralyze',
 'turnbill',
 'triangle',
 'apathy',
 'scans',
 'freshened',
 'bloated',
 'defintely',
 'qualls',
 'foreboding',
 'securely',
 'unfunniest',
 'shorter',
 'dusk',
 'sympathetically',
 'ride',
 'impressible',
 'designers',
 'nc',
 'dusseldorf',
 'taiwanese',
 'malinski',
 'hitlerism',
 'sixth',
 'resurrect',
 'monetegna',
 'welcoming',
 'conspicuous',
 'oldish',
 'terminus',
 'petron',
 'hospitalization',
 'robert',
 'nitric',
 'raimond',
 'emand',
 'attributable',
 'far',
 'pulitzer',
 'wimps',
 'occaisionally',
 'formulative',
 'pasta',
 'chipmunks',
 'giselher',
 'mcavoy',
 'infamous',
 'gringoire',
 'mondi',
 'ghoulie',
 'flightplan',
 'marin',
 'bought',
 'withers',
 'pp',
 'alternativa',
 'chilton',
 'litany',
 'torero',
 'transpired',
 'tupac',
 'shortfall',
 'lis',
 'marriag',
 'masons',
 'saddos',
 'papich',
 'nationality',
 'inexpensive',
 'amputee',
 'coattails',
 'ambushees',
 'reverand',
 'ladin',
 'microcuts',
 'bleep',
 'subplot',
 'willock',
 'telehobbie',
 'speckle',
 'mile',
 'wurlitzer',
 'outings',
 'tyro',
 'hugues',
 'loosened',
 'youll',
 'kippei',
 'unrivalled',
 'pringle',
 'biohazard',
 'ciphers',
 'bombings',
 'cambodian',
 'traumatizing',
 'servents',
 'handing',
 'carteloise',
 'fanzine',
 'tastelessly',
 'sarro',
 'mcmichael',
 'photogrsphed',
 'infertility',
 'batwomen',
 'prominent',
 'shebang',
 'limits',
 'krush',
 'automatically',
 'reeling',
 'bussinessmen',
 'neigh',
 'rishi',
 'emerges',
 'bullfight',
 'parsimony',
 'fostering',
 'calamities',
 'screenwriting',
 'broz',
 'inflicts',
 'overused',
 'blood',
 'showpiece',
 'break',
 'senior',
 'naively',
 'ream',
 'bankcrupcy',
 'slagged',
 'tunisia',
 'terrier',
 'paluzzi',
 'yellin',
 'snub',
 'dobie',
 'hangin',
 'webb',
 'amrish',
 'checks',
 'mindlessly',
 'amolad',
 'comprehending',
 'guaranteeing',
 'basora',
 'forgeries',
 'continuities',
 'arguing',
 'decoded',
 'recruiters',
 'php',
 'yokhai',
 'dragonballz',
 'belittled',
 'personnaly',
 'tottering',
 'negotiations',
 'seuss',
 'malo',
 'taka',
 'braslia',
 'fifties',
 'owen',
 'rocque',
 'weoponry',
 'populated',
 'transforms',
 'instigate',
 'grovel',
 'echoes',
 'ubba',
 'subterranean',
 'oblowitz',
 'sangre',
 'debunkers',
 'dummee',
 'hicks',
 'leaped',
 'gashuin',
 'pentagon',
 'scrubbing',
 'woodgrain',
 'meanie',
 'stagy',
 'governesses',
 'genies',
 'lassalle',
 'dedication',
 'alamothirteen',
 'tan',
 'videofilming',
 'visser',
 'effing',
 'regulations',
 'compulsory',
 'rightly',
 'youssef',
 'abdullah',
 'nyfd',
 'sensuously',
 'anthropologists',
 'cassi',
 'splaining',
 'mooner',
 'manzil',
 'self',
 'scales',
 'dissected',
 'zelda',
 'gymakta',
 'creepily',
 'vetoes',
 'sons',
 'lohde',
 'royale',
 'baltz',
 'prozac',
 'lug',
 'hal',
 'mos',
 'grandchildren',
 'muser',
 'rokkuchan',
 'pugsley',
 'payton',
 'nifty',
 'lor',
 'hig',
 'alekos',
 'nicolas',
 'bug',
 'rawks',
 'premonition',
 'charactersthe',
 'disavows',
 'yukfest',
 'intermediary',
 'pushes',
 'galindo',
 'scandi',
 'deewar',
 'coveys',
 'doppelganger',
 'norse',
 'paintings',
 'degrade',
 'fleashens',
 'baaaaad',
 'kaempfen',
 'conferred',
 'ithot',
 'thon',
 'thundiiayil',
 'ghosting',
 'modest',
 'mallik',
 'sessions',
 'fifteenth',
 'spoilerand',
 'transgenic',
 'hotties',
 'overlooked',
 'encircle',
 'apallingly',
 'madona',
 'trucks',
 'brusk',
 'sporca',
 'gautam',
 'greengrass',
 'transition',
 'am',
 'hipocracy',
 'cahulawassee',
 'silverstonesque',
 'yumi',
 'preclude',
 'refusals',
 'clay',
 'movieworld',
 'digby',
 'spins',
 'yolonda',
 'center',
 'abnormal',
 'rigamarole',
 'divers',
 'sorel',
 'transpiring',
 'charmless',
 'ryoko',
 'ditching',
 'pixie',
 'derriere',
 'scripture',
 'bachelors',
 'deluding',
 'malamud',
 'salesman',
 'narrating',
 'panjabi',
 'pati',
 'giuffria',
 'brilliance',
 'venereal',
 'lonelygirl',
 'ephron',
 'witherspoon',
 'notld',
 'clairedycat',
 'celie',
 'helmsman',
 'adkins',
 'dainton',
 'volckman',
 'torturro',
 'dilly',
 'bfg',
 'sermon',
 'qualifier',
 'catholic',
 'germans',
 'nurtures',
 'misrepresentative',
 'thrashed',
 'notle',
 'lobotomized',
 'sidaris',
 'horiible',
 'promiscuous',
 'sperm',
 'stalkers',
 'terrifiying',
 'gotell',
 'resituation',
 'curis',
 'downhill',
 'hasselhoff',
 'hastens',
 'beeman',
 'insures',
 'vintage',
 'silly',
 'booh',
 'neptune',
 'griggs',
 'arnon',
 'furballs',
 'horrror',
 'afflect',
 'soxers',
 'tweezers',
 'lure',
 'diry',
 'zeroni',
 'conservativism',
 'lan',
 'diligent',
 'konvitz',
 'intergenerational',
 'crackled',
 'jegede',
 'scours',
 'humanize',
 'dub',
 'quotes',
 'casablanka',
 'choke',
 'fkin',
 'reactive',
 'bollbuster',
 'island',
 'drule',
 'sceptical',
 'schwarzenberg',
 'observations',
 'doiiing',
 'lucinenne',
 'ringleaders',
 'gurukant',
 'deepika',
 'attendants',
 'distanced',
 'transcends',
 'jus',
 'fussbudget',
 'rifkin',
 'crutches',
 'cycle',
 'disguising',
 'typical',
 'malefique',
 'house',
 'fruits',
 'stalinism',
 'zantara',
 'sexploitative',
 'crumley',
 'bertram',
 'sedation',
 'presumbably',
 'dot',
 'quotidian',
 'litvak',
 'legitimates',
 'burrow',
 'misfire',
 'lloyd',
 'fleed',
 'jansch',
 'pryor',
 'terkovsky',
 'frech',
 'penetrated',
 'nihilism',
 'casomai',
 'ub',
 'ilias',
 'vinci',
 'rushmore',
 'pochath',
 'brokedown',
 'quartered',
 'competent',
 'armors',
 'fictionalization',
 'pipers',
 'balki',
 'jonathan',
 'mislead',
 'renee',
 'peeew',
 'commodus',
 'reconsiders',
 'pampered',
 'snazzy',
 'csar',
 'chatting',
 'ingsoc',
 'oland',
 'franticly',
 'chazel',
 'banish',
 'pardonable',
 'brokered',
 'firefighter',
 'ideally',
 'decomposing',
 'cross',
 'besch',
 'loafers',
 'pronunciations',
 'mascot',
 'kedrova',
 'closeted',
 'imparts',
 'leopards',
 'odysseia',
 'heurtebise',
 'maneuvering',
 'stars',
 'impediment',
 'lob',
 'kkk',
 'testimonial',
 'bunks',
 'unspeakable',
 'sierre',
 'scientalogy',
 'bans',
 'annick',
 'semantics',
 'urgently',
 'followes',
 'superhumans',
 'unopposed',
 'internal',
 'distance',
 'pilotable',
 'pecking',
 'teal',
 'turnup',
 'routines',
 'dodgeball',
 'trumps',
 'marketability',
 'assistance',
 'msted',
 'almereyda',
 'matelot',
 'drives',
 'epilepsy',
 'squared',
 'supersoldiers',
 'roos',
 'tyrannosaurus',
 'christmave',
 'undertaking',
 'rainie',
 'din',
 'dishonored',
 'bunuels',
 'looters',
 'shockingly',
 'fumbler',
 'gushes',
 'sansabelt',
 'chediak',
 'glacially',
 'quickly',
 'heirs',
 'diluting',
 'pumbaa',
 'thnks',
 'kuroda',
 'spiffing',
 'cyclop',
 'rotating',
 'denizens',
 'mes',
 'brozzie',
 'imperfection',
 'mitevska',
 'mcgree',
 'biting',
 'waner',
 'aidan',
 'jumble',
 'flyes',
 'alton',
 'freudstein',
 'consummates',
 'nell',
 'shared',
 'bloodline',
 'neighborhoods',
 'gleaming',
 'bopping',
 'durango',
 'decades',
 'poundage',
 'landen',
 'recited',
 'buzzer',
 'huntsbery',
 'try',
 'quipped',
 'sthreadid',
 'cringy',
 'vision',
 'legged',
 'senator',
 'noughties',
 'crescendo',
 'popstar',
 'studying',
 'ilsa',
 'josha',
 'sequence',
 'postlewaite',
 'blundering',
 'strom',
 'minimalism',
 'uncaring',
 'frakes',
 'formans',
 'kieslowski',
 'stanwyck',
 'lange',
 'jointly',
 'headed',
 'sector',
 'imbd',
 'unfurnished',
 'cindi',
 'meant',
 'uniting',
 'fugitive',
 'overcast',
 'caddie',
 'maid',
 'violated',
 'widowhood',
 'acual',
 'cohesiveness',
 'pundits',
 'critcism',
 'grange',
 'bannings',
 'essenay',
 'nyatta',
 'crumbled',
 'premise',
 'puchase',
 'shunack',
 'titillatingly',
 'zizek',
 'interfernce',
 'shvollenpecker',
 'spiralled',
 'grottos',
 'dalmers',
 ...]

In [18]:
import numpy as np

layer_0 = np.zeros((1,vocab_size))
layer_0


Out[18]:
array([[ 0.,  0.,  0., ...,  0.,  0.,  0.]])

In [19]:
from IPython.display import Image
Image(filename='sentiment_network.png')


Out[19]:

In [20]:
word2index = {}

for i,word in enumerate(vocab):
    word2index[word] = i
word2index


Out[20]:
{'': 0,
 'smattering': 1,
 'fifth': 2,
 'francie': 3,
 'gadg': 4,
 'watterman': 5,
 'macmahone': 6,
 'deliverance': 7,
 'sluizer': 8,
 'distraction': 9,
 'chiyo': 10,
 'illustrative': 11,
 'stoll': 12,
 'linwood': 13,
 'vicenzo': 14,
 'ferrel': 15,
 'torments': 16,
 'signalled': 17,
 'itz': 18,
 'clawed': 19,
 'subscribes': 20,
 'konec': 21,
 'heeds': 22,
 'telemundo': 23,
 'rasps': 24,
 'bocaccio': 25,
 'aragami': 26,
 'carolingians': 27,
 'thoughts': 28,
 'colloquialisms': 29,
 'weis': 30,
 'clunes': 31,
 'idolatry': 32,
 'conceptual': 33,
 'bustiest': 34,
 'orderd': 35,
 'dreadful': 36,
 'toucan': 37,
 'latterday': 38,
 'homem': 39,
 'stayover': 40,
 'elapsed': 41,
 'roadster': 42,
 'satanists': 43,
 'friend': 44,
 'africa': 45,
 'irritations': 46,
 'kindler': 47,
 'townsell': 48,
 'access': 49,
 'previews': 50,
 'hulkamaniacs': 51,
 'invalidity': 52,
 'dogpatch': 53,
 'fminin': 54,
 'disapproves': 55,
 'impotent': 56,
 'frenchwoman': 57,
 'fod': 58,
 'americanism': 59,
 'packenham': 60,
 'alaskey': 61,
 'lenghth': 62,
 'opulent': 63,
 'garbagemen': 64,
 'jobyna': 65,
 'fav': 66,
 'choreographers': 67,
 'ghibli': 68,
 'revelation': 69,
 'appease': 70,
 'congratulatory': 71,
 'filler': 72,
 'optics': 73,
 'tsing': 74,
 'niedhart': 75,
 'commanders': 76,
 'fortunantely': 77,
 'misunderstanding': 78,
 'eliana': 79,
 'indigestion': 80,
 'sparingly': 81,
 'aragorn': 82,
 'mimbos': 83,
 'puertorican': 84,
 'bhajpai': 85,
 'grazia': 86,
 'pitch': 87,
 'felicities': 88,
 'falangists': 89,
 'africans': 90,
 'dole': 91,
 'ronnies': 92,
 'ix': 93,
 'adventuresome': 94,
 'cbs': 95,
 'immigrant': 96,
 'cinders': 97,
 'feinnnes': 98,
 'mxyzptlk': 99,
 'meaty': 100,
 'classicks': 101,
 'fte': 102,
 'piecing': 103,
 'msb': 104,
 'dogs': 105,
 'musts': 106,
 'fenway': 107,
 'jeopardizes': 108,
 'boarders': 109,
 'attendant': 110,
 'burketsville': 111,
 'pilgrimage': 112,
 'surpassing': 113,
 'critique': 114,
 'bluffs': 115,
 'voluntarily': 116,
 'colonials': 117,
 'lengthen': 118,
 'machinery': 119,
 'stonking': 120,
 'ventures': 121,
 'dil': 122,
 'melvil': 123,
 'straddle': 124,
 'sexshooter': 125,
 'dystopian': 126,
 'butterfly': 127,
 'encompasses': 128,
 'fending': 129,
 'mundane': 130,
 'horseback': 131,
 'spinsters': 132,
 'thurman': 133,
 'crewmate': 134,
 'risky': 135,
 'entirety': 136,
 'fellowes': 137,
 'yevgeni': 138,
 'jest': 139,
 'scriptors': 140,
 'parole': 141,
 'parslow': 142,
 'addicted': 143,
 'lai': 144,
 'hospitality': 145,
 'buster': 146,
 'fleck': 147,
 'hobbling': 148,
 'favorit': 149,
 'dylan': 150,
 'collectors': 151,
 'secreteary': 152,
 'strate': 153,
 'seriousuly': 154,
 'orignal': 155,
 'burden': 156,
 'downplaying': 157,
 'tortuga': 158,
 'appearence': 159,
 'trintignant': 160,
 'cutlet': 161,
 'ance': 162,
 'baddness': 163,
 'patroni': 164,
 'bohemia': 165,
 'kollo': 166,
 'word': 167,
 'misinterpretated': 168,
 'hims': 169,
 'adorn': 170,
 'doggie': 171,
 'boulanger': 172,
 'verdict': 173,
 'aretha': 174,
 'abundant': 175,
 'ryaba': 176,
 'beullar': 177,
 'sexier': 178,
 'cree': 179,
 'implement': 180,
 'escargot': 181,
 'trolley': 182,
 'schlettow': 183,
 'cheyney': 184,
 'rumbler': 185,
 'fan': 186,
 'jekyll': 187,
 'belgrad': 188,
 'oireland': 189,
 'heterogeneous': 190,
 'baskets': 191,
 'sponsorship': 192,
 'wolverine': 193,
 'destines': 194,
 'com': 195,
 'everone': 196,
 'sedimentation': 197,
 'frolics': 198,
 'lauderdale': 199,
 'ungureanu': 200,
 'geroge': 201,
 'spiritual': 202,
 'transmuted': 203,
 'cpt': 204,
 'descas': 205,
 'deja': 206,
 'luise': 207,
 'humped': 208,
 'underline': 209,
 'gato': 210,
 'processed': 211,
 'succession': 212,
 'male': 213,
 'scumbags': 214,
 'suicides': 215,
 'delay': 216,
 'staccato': 217,
 'admixtures': 218,
 'plonk': 219,
 'fry': 220,
 'lufft': 221,
 'fps': 222,
 'daym': 223,
 'sailed': 224,
 'disporting': 225,
 'insulates': 226,
 'cockiness': 227,
 'ever': 228,
 'diminishing': 229,
 'sweetish': 230,
 'exercises': 231,
 'unspun': 232,
 'borring': 233,
 'sleek': 234,
 'spazz': 235,
 'bedrooms': 236,
 'sufficed': 237,
 'melds': 238,
 'whatsername': 239,
 'debunking': 240,
 'databanks': 241,
 'restrictions': 242,
 'tribe': 243,
 'hbk': 244,
 'synchronised': 245,
 'resneck': 246,
 'supermarkets': 247,
 'lunge': 248,
 'damagingly': 249,
 'giulia': 250,
 'afoul': 251,
 'variety': 252,
 'buck': 253,
 'rewinded': 254,
 'shipbuilding': 255,
 'internship': 256,
 'coulier': 257,
 'dicked': 258,
 'daniell': 259,
 'option': 260,
 'catholicism': 261,
 'marmelstein': 262,
 'gallipoli': 263,
 'sorts': 264,
 'detects': 265,
 'xia': 266,
 'accusation': 267,
 'lache': 268,
 'geometrically': 269,
 'sadistically': 270,
 'greenblatt': 271,
 'counteract': 272,
 'disclosing': 273,
 'prosecuting': 274,
 'triumphed': 275,
 'veddy': 276,
 'franic': 277,
 'madman': 278,
 'frets': 279,
 'trasforms': 280,
 'telegraph': 281,
 'gins': 282,
 'yardstick': 283,
 'rusting': 284,
 'miles': 285,
 'flitted': 286,
 'troyes': 287,
 'deify': 288,
 'timers': 289,
 'nearest': 290,
 'gorbunov': 291,
 'bsg': 292,
 'gated': 293,
 'twoddle': 294,
 'impairment': 295,
 'radiantly': 296,
 'puppetry': 297,
 'borough': 298,
 'remedios': 299,
 'commishioner': 300,
 'wrestling': 301,
 'arther': 302,
 'rasputin': 303,
 'plea': 304,
 'colony': 305,
 'noble': 306,
 'empress': 307,
 'villainies': 308,
 'victimizing': 309,
 'calloni': 310,
 'anayways': 311,
 'neatly': 312,
 'fireproof': 313,
 'koenigsegg': 314,
 'covington': 315,
 'morons': 316,
 'absoutley': 317,
 'gifting': 318,
 'enlighten': 319,
 'kaminska': 320,
 'humorless': 321,
 'unhurried': 322,
 'hellish': 323,
 'occasionally': 324,
 'alejandra': 325,
 'haden': 326,
 'boreham': 327,
 'cronenberg': 328,
 'missi': 329,
 'philippa': 330,
 'bridge': 331,
 'rochefort': 332,
 'directorship': 333,
 'discussable': 334,
 'latently': 335,
 'investor': 336,
 'liggin': 337,
 'abhi': 338,
 'monotony': 339,
 'dumb': 340,
 'luggage': 341,
 'clashes': 342,
 'memorializing': 343,
 'flan': 344,
 'barril': 345,
 'uncles': 346,
 'spectacular': 347,
 'joeseph': 348,
 'taboo': 349,
 'lifeforms': 350,
 'demme': 351,
 'attributing': 352,
 'kinka': 353,
 'beetch': 354,
 'fledged': 355,
 'cigarettes': 356,
 'discplines': 357,
 'gialli': 358,
 'asuka': 359,
 'roosevelt': 360,
 'criticize': 361,
 'bippity': 362,
 'persifina': 363,
 'jaundiced': 364,
 'superimposes': 365,
 'dismissable': 366,
 'jang': 367,
 'franz': 368,
 'partes': 369,
 'parkey': 370,
 'uncomically': 371,
 'resplendent': 372,
 'bravi': 373,
 'rutina': 374,
 'rosenbaum': 375,
 'mouton': 376,
 'bola': 377,
 'clarice': 378,
 'brigham': 379,
 'embarrassly': 380,
 'tonga': 381,
 'churlishly': 382,
 'unbelievable': 383,
 'rosco': 384,
 'misquotes': 385,
 'arkan': 386,
 'streetfight': 387,
 'snoring': 388,
 'grissom': 389,
 'choristers': 390,
 'investigatory': 391,
 'juarezon': 392,
 'dilution': 393,
 'isaaks': 394,
 'loooonnnnng': 395,
 'saxaphone': 396,
 'paralyze': 397,
 'turnbill': 398,
 'triangle': 399,
 'apathy': 400,
 'scans': 401,
 'freshened': 402,
 'bloated': 403,
 'defintely': 404,
 'qualls': 405,
 'foreboding': 406,
 'securely': 407,
 'unfunniest': 408,
 'shorter': 409,
 'dusk': 410,
 'sympathetically': 411,
 'ride': 412,
 'impressible': 413,
 'designers': 414,
 'nc': 415,
 'dusseldorf': 416,
 'taiwanese': 417,
 'malinski': 418,
 'hitlerism': 419,
 'sixth': 420,
 'resurrect': 421,
 'monetegna': 422,
 'welcoming': 423,
 'conspicuous': 424,
 'oldish': 425,
 'terminus': 426,
 'petron': 427,
 'hospitalization': 428,
 'robert': 429,
 'nitric': 430,
 'raimond': 431,
 'emand': 432,
 'attributable': 433,
 'far': 434,
 'pulitzer': 435,
 'wimps': 436,
 'occaisionally': 437,
 'formulative': 438,
 'pasta': 439,
 'chipmunks': 440,
 'giselher': 441,
 'mcavoy': 442,
 'infamous': 443,
 'gringoire': 444,
 'mondi': 445,
 'ghoulie': 446,
 'flightplan': 447,
 'marin': 448,
 'bought': 449,
 'withers': 450,
 'pp': 451,
 'alternativa': 452,
 'chilton': 453,
 'litany': 454,
 'torero': 455,
 'transpired': 456,
 'tupac': 457,
 'shortfall': 458,
 'lis': 459,
 'marriag': 460,
 'masons': 461,
 'saddos': 462,
 'papich': 463,
 'nationality': 464,
 'inexpensive': 465,
 'amputee': 466,
 'coattails': 467,
 'ambushees': 468,
 'reverand': 469,
 'ladin': 470,
 'microcuts': 471,
 'bleep': 472,
 'subplot': 473,
 'willock': 474,
 'telehobbie': 475,
 'speckle': 476,
 'mile': 477,
 'wurlitzer': 478,
 'outings': 479,
 'tyro': 480,
 'hugues': 481,
 'loosened': 482,
 'youll': 483,
 'kippei': 484,
 'unrivalled': 485,
 'pringle': 486,
 'biohazard': 487,
 'ciphers': 488,
 'bombings': 489,
 'cambodian': 490,
 'traumatizing': 491,
 'servents': 492,
 'handing': 493,
 'carteloise': 494,
 'fanzine': 495,
 'tastelessly': 496,
 'sarro': 497,
 'mcmichael': 498,
 'photogrsphed': 499,
 'infertility': 500,
 'batwomen': 501,
 'prominent': 502,
 'shebang': 503,
 'limits': 504,
 'krush': 505,
 'automatically': 506,
 'reeling': 507,
 'bussinessmen': 508,
 'neigh': 509,
 'rishi': 510,
 'emerges': 511,
 'bullfight': 512,
 'parsimony': 513,
 'fostering': 514,
 'calamities': 515,
 'screenwriting': 516,
 'broz': 517,
 'inflicts': 518,
 'overused': 519,
 'blood': 520,
 'showpiece': 521,
 'break': 522,
 'senior': 523,
 'naively': 524,
 'ream': 525,
 'bankcrupcy': 526,
 'slagged': 527,
 'tunisia': 528,
 'terrier': 529,
 'paluzzi': 530,
 'yellin': 531,
 'snub': 532,
 'dobie': 533,
 'hangin': 534,
 'webb': 535,
 'amrish': 536,
 'checks': 537,
 'mindlessly': 538,
 'amolad': 539,
 'comprehending': 540,
 'guaranteeing': 541,
 'basora': 542,
 'forgeries': 543,
 'continuities': 544,
 'arguing': 545,
 'decoded': 546,
 'recruiters': 547,
 'php': 548,
 'yokhai': 549,
 'dragonballz': 550,
 'belittled': 551,
 'personnaly': 552,
 'tottering': 553,
 'negotiations': 554,
 'seuss': 555,
 'malo': 556,
 'taka': 557,
 'braslia': 558,
 'fifties': 559,
 'owen': 560,
 'rocque': 561,
 'weoponry': 562,
 'populated': 563,
 'transforms': 564,
 'instigate': 565,
 'grovel': 566,
 'echoes': 567,
 'ubba': 568,
 'subterranean': 569,
 'oblowitz': 570,
 'sangre': 571,
 'debunkers': 572,
 'dummee': 573,
 'hicks': 574,
 'leaped': 575,
 'gashuin': 576,
 'pentagon': 577,
 'scrubbing': 578,
 'woodgrain': 579,
 'meanie': 580,
 'stagy': 581,
 'governesses': 582,
 'genies': 583,
 'lassalle': 584,
 'dedication': 585,
 'alamothirteen': 586,
 'tan': 587,
 'videofilming': 588,
 'visser': 589,
 'effing': 590,
 'regulations': 591,
 'compulsory': 592,
 'rightly': 593,
 'youssef': 594,
 'abdullah': 595,
 'nyfd': 596,
 'sensuously': 597,
 'anthropologists': 598,
 'cassi': 599,
 'splaining': 600,
 'mooner': 601,
 'manzil': 602,
 'self': 603,
 'scales': 604,
 'dissected': 605,
 'zelda': 606,
 'gymakta': 607,
 'creepily': 608,
 'vetoes': 609,
 'sons': 610,
 'lohde': 611,
 'royale': 612,
 'baltz': 613,
 'prozac': 614,
 'lug': 615,
 'hal': 616,
 'mos': 617,
 'grandchildren': 618,
 'muser': 619,
 'rokkuchan': 620,
 'pugsley': 621,
 'payton': 622,
 'nifty': 623,
 'lor': 624,
 'hig': 625,
 'alekos': 626,
 'nicolas': 627,
 'bug': 628,
 'rawks': 629,
 'premonition': 630,
 'charactersthe': 631,
 'disavows': 632,
 'yukfest': 633,
 'intermediary': 634,
 'pushes': 635,
 'galindo': 636,
 'scandi': 637,
 'deewar': 638,
 'coveys': 639,
 'doppelganger': 640,
 'norse': 641,
 'paintings': 642,
 'degrade': 643,
 'fleashens': 644,
 'baaaaad': 645,
 'kaempfen': 646,
 'conferred': 647,
 'ithot': 648,
 'thon': 649,
 'thundiiayil': 650,
 'ghosting': 651,
 'modest': 652,
 'mallik': 653,
 'sessions': 654,
 'fifteenth': 655,
 'spoilerand': 656,
 'transgenic': 657,
 'hotties': 658,
 'overlooked': 659,
 'encircle': 660,
 'apallingly': 661,
 'madona': 662,
 'trucks': 663,
 'brusk': 664,
 'sporca': 665,
 'gautam': 666,
 'greengrass': 667,
 'transition': 668,
 'am': 669,
 'hipocracy': 670,
 'cahulawassee': 671,
 'silverstonesque': 672,
 'yumi': 673,
 'preclude': 674,
 'refusals': 675,
 'clay': 676,
 'movieworld': 677,
 'digby': 678,
 'spins': 679,
 'yolonda': 680,
 'center': 681,
 'abnormal': 682,
 'rigamarole': 683,
 'divers': 684,
 'sorel': 685,
 'transpiring': 686,
 'charmless': 687,
 'ryoko': 688,
 'ditching': 689,
 'pixie': 690,
 'derriere': 691,
 'scripture': 692,
 'bachelors': 693,
 'deluding': 694,
 'malamud': 695,
 'salesman': 696,
 'narrating': 697,
 'panjabi': 698,
 'pati': 699,
 'giuffria': 700,
 'brilliance': 701,
 'venereal': 702,
 'lonelygirl': 703,
 'ephron': 704,
 'witherspoon': 705,
 'notld': 706,
 'clairedycat': 707,
 'celie': 708,
 'helmsman': 709,
 'adkins': 710,
 'dainton': 711,
 'volckman': 712,
 'torturro': 713,
 'dilly': 714,
 'bfg': 715,
 'sermon': 716,
 'qualifier': 717,
 'catholic': 718,
 'germans': 719,
 'nurtures': 720,
 'misrepresentative': 721,
 'thrashed': 722,
 'notle': 723,
 'lobotomized': 724,
 'sidaris': 725,
 'horiible': 726,
 'promiscuous': 727,
 'sperm': 728,
 'stalkers': 729,
 'terrifiying': 730,
 'gotell': 731,
 'resituation': 732,
 'curis': 733,
 'downhill': 734,
 'hasselhoff': 735,
 'hastens': 736,
 'beeman': 737,
 'insures': 738,
 'vintage': 739,
 'silly': 740,
 'booh': 741,
 'neptune': 742,
 'griggs': 743,
 'arnon': 744,
 'furballs': 745,
 'horrror': 746,
 'afflect': 747,
 'soxers': 748,
 'tweezers': 749,
 'lure': 750,
 'diry': 751,
 'zeroni': 752,
 'conservativism': 753,
 'lan': 754,
 'diligent': 755,
 'konvitz': 756,
 'intergenerational': 757,
 'crackled': 758,
 'jegede': 759,
 'scours': 760,
 'humanize': 761,
 'dub': 762,
 'quotes': 763,
 'casablanka': 764,
 'choke': 765,
 'fkin': 766,
 'reactive': 767,
 'bollbuster': 768,
 'island': 769,
 'drule': 770,
 'sceptical': 771,
 'schwarzenberg': 772,
 'observations': 773,
 'doiiing': 774,
 'lucinenne': 775,
 'ringleaders': 776,
 'gurukant': 777,
 'deepika': 778,
 'attendants': 779,
 'distanced': 780,
 'transcends': 781,
 'jus': 782,
 'fussbudget': 783,
 'rifkin': 784,
 'crutches': 785,
 'cycle': 786,
 'disguising': 787,
 'typical': 788,
 'malefique': 789,
 'house': 790,
 'fruits': 791,
 'stalinism': 792,
 'zantara': 793,
 'sexploitative': 794,
 'crumley': 795,
 'bertram': 796,
 'sedation': 797,
 'presumbably': 798,
 'dot': 799,
 'quotidian': 800,
 'litvak': 801,
 'legitimates': 802,
 'burrow': 803,
 'misfire': 804,
 'lloyd': 805,
 'fleed': 806,
 'jansch': 807,
 'pryor': 808,
 'terkovsky': 809,
 'frech': 810,
 'penetrated': 811,
 'nihilism': 812,
 'casomai': 813,
 'ub': 814,
 'ilias': 815,
 'vinci': 816,
 'rushmore': 817,
 'pochath': 818,
 'brokedown': 819,
 'quartered': 820,
 'competent': 821,
 'armors': 822,
 'fictionalization': 823,
 'pipers': 824,
 'balki': 825,
 'jonathan': 826,
 'mislead': 827,
 'renee': 828,
 'peeew': 829,
 'commodus': 830,
 'reconsiders': 831,
 'pampered': 832,
 'snazzy': 833,
 'csar': 834,
 'chatting': 835,
 'ingsoc': 836,
 'oland': 837,
 'franticly': 838,
 'chazel': 839,
 'banish': 840,
 'pardonable': 841,
 'brokered': 842,
 'firefighter': 843,
 'ideally': 844,
 'decomposing': 845,
 'cross': 846,
 'besch': 847,
 'loafers': 848,
 'pronunciations': 849,
 'mascot': 850,
 'kedrova': 851,
 'closeted': 852,
 'imparts': 853,
 'leopards': 854,
 'odysseia': 855,
 'heurtebise': 856,
 'maneuvering': 857,
 'stars': 858,
 'impediment': 859,
 'lob': 860,
 'kkk': 861,
 'testimonial': 862,
 'bunks': 863,
 'unspeakable': 864,
 'sierre': 865,
 'scientalogy': 866,
 'bans': 867,
 'annick': 868,
 'semantics': 869,
 'urgently': 870,
 'followes': 871,
 'superhumans': 872,
 'unopposed': 873,
 'internal': 874,
 'distance': 875,
 'pilotable': 876,
 'pecking': 877,
 'teal': 878,
 'turnup': 879,
 'routines': 880,
 'dodgeball': 881,
 'trumps': 882,
 'marketability': 883,
 'assistance': 884,
 'msted': 885,
 'almereyda': 886,
 'matelot': 887,
 'drives': 888,
 'epilepsy': 889,
 'squared': 890,
 'supersoldiers': 891,
 'roos': 892,
 'tyrannosaurus': 893,
 'christmave': 894,
 'undertaking': 895,
 'rainie': 896,
 'din': 897,
 'dishonored': 898,
 'bunuels': 899,
 'looters': 900,
 'shockingly': 901,
 'fumbler': 902,
 'gushes': 903,
 'sansabelt': 904,
 'chediak': 905,
 'glacially': 906,
 'quickly': 907,
 'heirs': 908,
 'diluting': 909,
 'pumbaa': 910,
 'thnks': 911,
 'kuroda': 912,
 'spiffing': 913,
 'cyclop': 914,
 'rotating': 915,
 'denizens': 916,
 'mes': 917,
 'brozzie': 918,
 'imperfection': 919,
 'mitevska': 920,
 'mcgree': 921,
 'biting': 922,
 'waner': 923,
 'aidan': 924,
 'jumble': 925,
 'flyes': 926,
 'alton': 927,
 'freudstein': 928,
 'consummates': 929,
 'nell': 930,
 'shared': 931,
 'bloodline': 932,
 'neighborhoods': 933,
 'gleaming': 934,
 'bopping': 935,
 'durango': 936,
 'decades': 937,
 'poundage': 938,
 'landen': 939,
 'recited': 940,
 'buzzer': 941,
 'huntsbery': 942,
 'try': 943,
 'quipped': 944,
 'sthreadid': 945,
 'cringy': 946,
 'vision': 947,
 'legged': 948,
 'senator': 949,
 'noughties': 950,
 'crescendo': 951,
 'popstar': 952,
 'studying': 953,
 'ilsa': 954,
 'josha': 955,
 'sequence': 956,
 'postlewaite': 957,
 'blundering': 958,
 'strom': 959,
 'minimalism': 960,
 'uncaring': 961,
 'frakes': 962,
 'formans': 963,
 'kieslowski': 964,
 'stanwyck': 965,
 'lange': 966,
 'jointly': 967,
 'headed': 968,
 'sector': 969,
 'imbd': 970,
 'unfurnished': 971,
 'cindi': 972,
 'meant': 973,
 'uniting': 974,
 'fugitive': 975,
 'overcast': 976,
 'caddie': 977,
 'maid': 978,
 'violated': 979,
 'widowhood': 980,
 'acual': 981,
 'cohesiveness': 982,
 'pundits': 983,
 'critcism': 984,
 'grange': 985,
 'bannings': 986,
 'essenay': 987,
 'nyatta': 988,
 'crumbled': 989,
 'premise': 990,
 'puchase': 991,
 'shunack': 992,
 'titillatingly': 993,
 'zizek': 994,
 'interfernce': 995,
 'shvollenpecker': 996,
 'spiralled': 997,
 'grottos': 998,
 'dalmers': 999,
 ...}

In [21]:
def update_input_layer(review):
    
    global layer_0
    
    # clear out previous state, reset the layer to be all 0s
    layer_0 *= 0
    for word in review.split(" "):
        layer_0[0][word2index[word]] += 1

update_input_layer(reviews[0])

In [22]:
layer_0


Out[22]:
array([[ 18.,   0.,   0., ...,   0.,   0.,   0.]])

In [23]:
def get_target_for_label(label):
    if(label == 'POSITIVE'):
        return 1
    else:
        return 0

In [24]:
labels[0]


Out[24]:
'POSITIVE'

In [25]:
get_target_for_label(labels[0])


Out[25]:
1

In [26]:
labels[1]


Out[26]:
'NEGATIVE'

In [27]:
get_target_for_label(labels[1])


Out[27]:
0

Project 3: Building a Neural Network

  • Start with your neural network from the last chapter
  • 3 layer neural network
  • no non-linearity in hidden layer
  • use our functions to create the training data
  • create a "pre_process_data" function to create vocabulary for our training data generating functions
  • modify "train" to train over the entire corpus

Where to Get Help if You Need it


In [28]:
import time
import sys
import numpy as np

# Let's tweak our network from before to model these phenomena
class SentimentNetwork:
    def __init__(self, reviews,labels,hidden_nodes = 10, learning_rate = 0.1):
       
        # set our random number generator 
        np.random.seed(1)
    
        self.pre_process_data(reviews, labels)
        
        self.init_network(len(self.review_vocab),hidden_nodes, 1, learning_rate)
        
        
    def pre_process_data(self, reviews, labels):
        
        review_vocab = set()
        for review in reviews:
            for word in review.split(" "):
                review_vocab.add(word)
        self.review_vocab = list(review_vocab)
        
        label_vocab = set()
        for label in labels:
            label_vocab.add(label)
        
        self.label_vocab = list(label_vocab)
        
        self.review_vocab_size = len(self.review_vocab)
        self.label_vocab_size = len(self.label_vocab)
        
        self.word2index = {}
        for i, word in enumerate(self.review_vocab):
            self.word2index[word] = i
        
        self.label2index = {}
        for i, label in enumerate(self.label_vocab):
            self.label2index[label] = i
         
        
    def init_network(self, input_nodes, hidden_nodes, output_nodes, learning_rate):
        # Set number of nodes in input, hidden and output layers.
        self.input_nodes = input_nodes
        self.hidden_nodes = hidden_nodes
        self.output_nodes = output_nodes

        # Initialize weights
        self.weights_0_1 = np.zeros((self.input_nodes,self.hidden_nodes))
    
        self.weights_1_2 = np.random.normal(0.0, self.output_nodes**-0.5, 
                                                (self.hidden_nodes, self.output_nodes))
        
        self.learning_rate = learning_rate
        
        self.layer_0 = np.zeros((1,input_nodes))
    
        
    def update_input_layer(self,review):

        # clear out previous state, reset the layer to be all 0s
        self.layer_0 *= 0
        for word in review.split(" "):
            if(word in self.word2index.keys()):
                self.layer_0[0][self.word2index[word]] += 1
                
    def get_target_for_label(self,label):
        if(label == 'POSITIVE'):
            return 1
        else:
            return 0
        
    def sigmoid(self,x):
        return 1 / (1 + np.exp(-x))
    
    
    def sigmoid_output_2_derivative(self,output):
        return output * (1 - output)
    
    def train(self, training_reviews, training_labels):
        
        assert(len(training_reviews) == len(training_labels))
        
        correct_so_far = 0
        
        start = time.time()
        
        for i in range(len(training_reviews)):
            
            review = training_reviews[i]
            label = training_labels[i]
            
            #### Implement the forward pass here ####
            ### Forward pass ###

            # Input Layer
            self.update_input_layer(review)

            # Hidden layer
            layer_1 = self.layer_0.dot(self.weights_0_1)

            # Output layer
            layer_2 = self.sigmoid(layer_1.dot(self.weights_1_2))

            #### Implement the backward pass here ####
            ### Backward pass ###

            # TODO: Output error
            layer_2_error = layer_2 - self.get_target_for_label(label) # Output layer error is the difference between desired target and actual output.
            layer_2_delta = layer_2_error * self.sigmoid_output_2_derivative(layer_2)

            # TODO: Backpropagated error
            layer_1_error = layer_2_delta.dot(self.weights_1_2.T) # errors propagated to the hidden layer
            layer_1_delta = layer_1_error # hidden layer gradients - no nonlinearity so it's the same as the error

            # TODO: Update the weights
            self.weights_1_2 -= layer_1.T.dot(layer_2_delta) * self.learning_rate # update hidden-to-output weights with gradient descent step
            self.weights_0_1 -= self.layer_0.T.dot(layer_1_delta) * self.learning_rate # update input-to-hidden weights with gradient descent step

            if(np.abs(layer_2_error) < 0.5):
                correct_so_far += 1
            
            reviews_per_second = i / float(time.time() - start)
            
            sys.stdout.write("\rProgress:" + str(100 * i/float(len(training_reviews)))[:4] + "% Speed(reviews/sec):" + str(reviews_per_second)[0:5] + " #Correct:" + str(correct_so_far) + " #Trained:" + str(i+1) + " Training Accuracy:" + str(correct_so_far * 100 / float(i+1))[:4] + "%")
            if(i % 2500 == 0):
                print("")
    
    def test(self, testing_reviews, testing_labels):
        
        correct = 0
        
        start = time.time()
        
        for i in range(len(testing_reviews)):
            pred = self.run(testing_reviews[i])
            if(pred == testing_labels[i]):
                correct += 1
            
            reviews_per_second = i / float(time.time() - start)
            
            sys.stdout.write("\rProgress:" + str(100 * i/float(len(testing_reviews)))[:4] \
                             + "% Speed(reviews/sec):" + str(reviews_per_second)[0:5] \
                            + "% #Correct:" + str(correct) + " #Tested:" + str(i+1) + " Testing Accuracy:" + str(correct * 100 / float(i+1))[:4] + "%")
    
    def run(self, review):
        
        # Input Layer
        self.update_input_layer(review.lower())

        # Hidden layer
        layer_1 = self.layer_0.dot(self.weights_0_1)

        # Output layer
        layer_2 = self.sigmoid(layer_1.dot(self.weights_1_2))
        
        if(layer_2[0] > 0.5):
            return "POSITIVE"
        else:
            return "NEGATIVE"

In [29]:
mlp = SentimentNetwork(reviews[:-1000],labels[:-1000], learning_rate=0.1)

In [61]:
# evaluate our model before training (just to show how horrible it is)
mlp.test(reviews[-1000:],labels[-1000:])


Progress:99.9% Speed(reviews/sec):587.5% #Correct:500 #Tested:1000 Testing Accuracy:50.0%

In [62]:
# train the network
mlp.train(reviews[:-1000],labels[:-1000])


Progress:0.0% Speed(reviews/sec):0.0 #Correct:0 #Trained:1 Training Accuracy:0.0%
Progress:10.4% Speed(reviews/sec):89.58 #Correct:1250 #Trained:2501 Training Accuracy:49.9%
Progress:20.8% Speed(reviews/sec):95.03 #Correct:2500 #Trained:5001 Training Accuracy:49.9%
Progress:27.4% Speed(reviews/sec):95.46 #Correct:3295 #Trained:6592 Training Accuracy:49.9%
---------------------------------------------------------------------------
KeyboardInterrupt                         Traceback (most recent call last)
<ipython-input-62-d0f5d85ad402> in <module>()
      1 # train the network
----> 2 mlp.train(reviews[:-1000],labels[:-1000])

<ipython-input-59-6334c4ec4642> in train(self, training_reviews, training_labels)
    117             # TODO: Update the weights
    118             self.weights_1_2 -= layer_1.T.dot(layer_2_delta) * self.learning_rate # update hidden-to-output weights with gradient descent step
--> 119             self.weights_0_1 -= self.layer_0.T.dot(layer_1_delta) * self.learning_rate # update input-to-hidden weights with gradient descent step
    120 
    121             if(np.abs(layer_2_error) < 0.5):

KeyboardInterrupt: 

In [63]:
mlp = SentimentNetwork(reviews[:-1000],labels[:-1000], learning_rate=0.01)

In [64]:
# train the network
mlp.train(reviews[:-1000],labels[:-1000])


Progress:0.0% Speed(reviews/sec):0.0 #Correct:0 #Trained:1 Training Accuracy:0.0%
Progress:10.4% Speed(reviews/sec):96.39 #Correct:1247 #Trained:2501 Training Accuracy:49.8%
Progress:20.8% Speed(reviews/sec):99.31 #Correct:2497 #Trained:5001 Training Accuracy:49.9%
Progress:22.8% Speed(reviews/sec):99.02 #Correct:2735 #Trained:5476 Training Accuracy:49.9%
---------------------------------------------------------------------------
KeyboardInterrupt                         Traceback (most recent call last)
<ipython-input-64-d0f5d85ad402> in <module>()
      1 # train the network
----> 2 mlp.train(reviews[:-1000],labels[:-1000])

<ipython-input-59-6334c4ec4642> in train(self, training_reviews, training_labels)
    117             # TODO: Update the weights
    118             self.weights_1_2 -= layer_1.T.dot(layer_2_delta) * self.learning_rate # update hidden-to-output weights with gradient descent step
--> 119             self.weights_0_1 -= self.layer_0.T.dot(layer_1_delta) * self.learning_rate # update input-to-hidden weights with gradient descent step
    120 
    121             if(np.abs(layer_2_error) < 0.5):

KeyboardInterrupt: 

In [65]:
mlp = SentimentNetwork(reviews[:-1000],labels[:-1000], learning_rate=0.001)

In [66]:
# train the network
mlp.train(reviews[:-1000],labels[:-1000])


Progress:0.0% Speed(reviews/sec):0.0 #Correct:0 #Trained:1 Training Accuracy:0.0%
Progress:10.4% Speed(reviews/sec):98.77 #Correct:1267 #Trained:2501 Training Accuracy:50.6%
Progress:20.8% Speed(reviews/sec):98.79 #Correct:2640 #Trained:5001 Training Accuracy:52.7%
Progress:31.2% Speed(reviews/sec):98.58 #Correct:4109 #Trained:7501 Training Accuracy:54.7%
Progress:41.6% Speed(reviews/sec):93.78 #Correct:5638 #Trained:10001 Training Accuracy:56.3%
Progress:52.0% Speed(reviews/sec):91.76 #Correct:7246 #Trained:12501 Training Accuracy:57.9%
Progress:62.5% Speed(reviews/sec):92.42 #Correct:8841 #Trained:15001 Training Accuracy:58.9%
Progress:69.4% Speed(reviews/sec):92.58 #Correct:9934 #Trained:16668 Training Accuracy:59.5%
---------------------------------------------------------------------------
KeyboardInterrupt                         Traceback (most recent call last)
<ipython-input-66-d0f5d85ad402> in <module>()
      1 # train the network
----> 2 mlp.train(reviews[:-1000],labels[:-1000])

<ipython-input-59-6334c4ec4642> in train(self, training_reviews, training_labels)
    117             # TODO: Update the weights
    118             self.weights_1_2 -= layer_1.T.dot(layer_2_delta) * self.learning_rate # update hidden-to-output weights with gradient descent step
--> 119             self.weights_0_1 -= self.layer_0.T.dot(layer_1_delta) * self.learning_rate # update input-to-hidden weights with gradient descent step
    120 
    121             if(np.abs(layer_2_error) < 0.5):

KeyboardInterrupt: 

Understanding Neural Noise


In [30]:
from IPython.display import Image
Image(filename='sentiment_network.png')


Out[30]:

In [31]:
def update_input_layer(review):
    
    global layer_0
    
    # clear out previous state, reset the layer to be all 0s
    layer_0 *= 0
    for word in review.split(" "):
        layer_0[0][word2index[word]] += 1

update_input_layer(reviews[0])

In [32]:
layer_0


Out[32]:
array([[ 18.,   0.,   0., ...,   0.,   0.,   0.]])

In [33]:
review_counter = Counter()

In [34]:
for word in reviews[0].split(" "):
    review_counter[word] += 1

In [35]:
review_counter.most_common()


Out[35]:
[('.', 27),
 ('', 18),
 ('the', 9),
 ('to', 6),
 ('high', 5),
 ('i', 5),
 ('bromwell', 4),
 ('is', 4),
 ('a', 4),
 ('teachers', 4),
 ('that', 4),
 ('of', 4),
 ('it', 2),
 ('at', 2),
 ('as', 2),
 ('school', 2),
 ('my', 2),
 ('in', 2),
 ('me', 2),
 ('students', 2),
 ('their', 2),
 ('student', 2),
 ('cartoon', 1),
 ('comedy', 1),
 ('ran', 1),
 ('same', 1),
 ('time', 1),
 ('some', 1),
 ('other', 1),
 ('programs', 1),
 ('about', 1),
 ('life', 1),
 ('such', 1),
 ('years', 1),
 ('teaching', 1),
 ('profession', 1),
 ('lead', 1),
 ('believe', 1),
 ('s', 1),
 ('satire', 1),
 ('much', 1),
 ('closer', 1),
 ('reality', 1),
 ('than', 1),
 ('scramble', 1),
 ('survive', 1),
 ('financially', 1),
 ('insightful', 1),
 ('who', 1),
 ('can', 1),
 ('see', 1),
 ('right', 1),
 ('through', 1),
 ('pathetic', 1),
 ('pomp', 1),
 ('pettiness', 1),
 ('whole', 1),
 ('situation', 1),
 ('all', 1),
 ('remind', 1),
 ('schools', 1),
 ('knew', 1),
 ('and', 1),
 ('when', 1),
 ('saw', 1),
 ('episode', 1),
 ('which', 1),
 ('repeatedly', 1),
 ('tried', 1),
 ('burn', 1),
 ('down', 1),
 ('immediately', 1),
 ('recalled', 1),
 ('classic', 1),
 ('line', 1),
 ('inspector', 1),
 ('m', 1),
 ('here', 1),
 ('sack', 1),
 ('one', 1),
 ('your', 1),
 ('welcome', 1),
 ('expect', 1),
 ('many', 1),
 ('adults', 1),
 ('age', 1),
 ('think', 1),
 ('far', 1),
 ('fetched', 1),
 ('what', 1),
 ('pity', 1),
 ('isn', 1),
 ('t', 1)]

In [36]:
import time
import sys
import numpy as np

# Let's tweak our network from before to model these phenomena
class SentimentNetwork:
    def __init__(self, reviews,labels,hidden_nodes = 10, learning_rate = 0.1):
       
        # set our random number generator 
        np.random.seed(1)
    
        self.pre_process_data(reviews, labels)
        
        self.init_network(len(self.review_vocab),hidden_nodes, 1, learning_rate)
        
        
    def pre_process_data(self, reviews, labels):
        
        review_vocab = set()
        for review in reviews:
            for word in review.split(" "):
                review_vocab.add(word)
        self.review_vocab = list(review_vocab)
        
        label_vocab = set()
        for label in labels:
            label_vocab.add(label)
        
        self.label_vocab = list(label_vocab)
        
        self.review_vocab_size = len(self.review_vocab)
        self.label_vocab_size = len(self.label_vocab)
        
        self.word2index = {}
        for i, word in enumerate(self.review_vocab):
            self.word2index[word] = i
        
        self.label2index = {}
        for i, label in enumerate(self.label_vocab):
            self.label2index[label] = i
         
        
    def init_network(self, input_nodes, hidden_nodes, output_nodes, learning_rate):
        # Set number of nodes in input, hidden and output layers.
        self.input_nodes = input_nodes
        self.hidden_nodes = hidden_nodes
        self.output_nodes = output_nodes

        # Initialize weights
        self.weights_0_1 = np.zeros((self.input_nodes,self.hidden_nodes))
    
        self.weights_1_2 = np.random.normal(0.0, self.output_nodes**-0.5, 
                                                (self.hidden_nodes, self.output_nodes))
        
        self.learning_rate = learning_rate
        
        self.layer_0 = np.zeros((1,input_nodes))
    
        
    def update_input_layer(self,review):

        # clear out previous state, reset the layer to be all 0s
        self.layer_0 *= 0
        for word in review.split(" "):
            if(word in self.word2index.keys()):
                self.layer_0[0][self.word2index[word]] = 1
                
    def get_target_for_label(self,label):
        if(label == 'POSITIVE'):
            return 1
        else:
            return 0
        
    def sigmoid(self,x):
        return 1 / (1 + np.exp(-x))
    
    
    def sigmoid_output_2_derivative(self,output):
        return output * (1 - output)
    
    def train(self, training_reviews, training_labels):
        
        assert(len(training_reviews) == len(training_labels))
        
        correct_so_far = 0
        
        start = time.time()
        
        for i in range(len(training_reviews)):
            
            review = training_reviews[i]
            label = training_labels[i]
            
            #### Implement the forward pass here ####
            ### Forward pass ###

            # Input Layer
            self.update_input_layer(review)

            # Hidden layer
            layer_1 = self.layer_0.dot(self.weights_0_1)

            # Output layer
            layer_2 = self.sigmoid(layer_1.dot(self.weights_1_2))

            #### Implement the backward pass here ####
            ### Backward pass ###

            # TODO: Output error
            layer_2_error = layer_2 - self.get_target_for_label(label) # Output layer error is the difference between desired target and actual output.
            layer_2_delta = layer_2_error * self.sigmoid_output_2_derivative(layer_2)

            # TODO: Backpropagated error
            layer_1_error = layer_2_delta.dot(self.weights_1_2.T) # errors propagated to the hidden layer
            layer_1_delta = layer_1_error # hidden layer gradients - no nonlinearity so it's the same as the error

            # TODO: Update the weights
            self.weights_1_2 -= layer_1.T.dot(layer_2_delta) * self.learning_rate # update hidden-to-output weights with gradient descent step
            self.weights_0_1 -= self.layer_0.T.dot(layer_1_delta) * self.learning_rate # update input-to-hidden weights with gradient descent step

            if(np.abs(layer_2_error) < 0.5):
                correct_so_far += 1
            
            reviews_per_second = i / float(time.time() - start)
            
            sys.stdout.write("\rProgress:" + str(100 * i/float(len(training_reviews)))[:4] + "% Speed(reviews/sec):" + str(reviews_per_second)[0:5] + " #Correct:" + str(correct_so_far) + " #Trained:" + str(i+1) + " Training Accuracy:" + str(correct_so_far * 100 / float(i+1))[:4] + "%")
            if(i % 2500 == 0):
                print("")
    
    def test(self, testing_reviews, testing_labels):
        
        correct = 0
        
        start = time.time()
        
        for i in range(len(testing_reviews)):
            pred = self.run(testing_reviews[i])
            if(pred == testing_labels[i]):
                correct += 1
            
            reviews_per_second = i / float(time.time() - start)
            
            sys.stdout.write("\rProgress:" + str(100 * i/float(len(testing_reviews)))[:4] \
                             + "% Speed(reviews/sec):" + str(reviews_per_second)[0:5] \
                            + "% #Correct:" + str(correct) + " #Tested:" + str(i+1) + " Testing Accuracy:" + str(correct * 100 / float(i+1))[:4] + "%")
    
    def run(self, review):
        
        # Input Layer
        self.update_input_layer(review.lower())

        # Hidden layer
        layer_1 = self.layer_0.dot(self.weights_0_1)

        # Output layer
        layer_2 = self.sigmoid(layer_1.dot(self.weights_1_2))
        
        if(layer_2[0] > 0.5):
            return "POSITIVE"
        else:
            return "NEGATIVE"

In [37]:
mlp = SentimentNetwork(reviews[:-1000],labels[:-1000], learning_rate=0.1)

In [38]:
mlp.train(reviews[:-1000],labels[:-1000])


Progress:0.0% Speed(reviews/sec):0.0 #Correct:0 #Trained:1 Training Accuracy:0.0%
Progress:10.4% Speed(reviews/sec):144.6 #Correct:1817 #Trained:2501 Training Accuracy:72.6%
Progress:20.8% Speed(reviews/sec):138.2 #Correct:3788 #Trained:5001 Training Accuracy:75.7%
Progress:31.2% Speed(reviews/sec):135.3 #Correct:5870 #Trained:7501 Training Accuracy:78.2%
Progress:41.6% Speed(reviews/sec):134.1 #Correct:8015 #Trained:10001 Training Accuracy:80.1%
Progress:52.0% Speed(reviews/sec):134.9 #Correct:10156 #Trained:12501 Training Accuracy:81.2%
Progress:62.5% Speed(reviews/sec):136.5 #Correct:12303 #Trained:15001 Training Accuracy:82.0%
Progress:72.9% Speed(reviews/sec):136.2 #Correct:14415 #Trained:17501 Training Accuracy:82.3%
Progress:83.3% Speed(reviews/sec):136.9 #Correct:16591 #Trained:20001 Training Accuracy:82.9%
Progress:93.7% Speed(reviews/sec):138.3 #Correct:18779 #Trained:22501 Training Accuracy:83.4%
Progress:99.9% Speed(reviews/sec):137.8 #Correct:20106 #Trained:24000 Training Accuracy:83.7%

In [39]:
mlp.test(reviews[-1000:],labels[-1000:])


Progress:99.9% Speed(reviews/sec):618.7% #Correct:853 #Tested:1000 Testing Accuracy:85.3%

In [ ]: