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%matplotlib inline
from matplotlib import pylab as pl
import cPickle as pickle
import pandas as pd
import numpy as np
import os
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df = pd.DataFrame()
df['gb'] = pd.read_csv('../submissions/140928-predict.1.csv', index_col='clip', squeeze=True) #64
df['rf'] = pd.read_csv('../submissions/140926-predict.2.csv', index_col='clip', squeeze=True)
df['rfpca'] = pd.read_csv('../submissions/141001-predict.1.csv', index_col='clip', squeeze=True)
df['dbn'] = pd.read_csv('../submissions/140930-predict.5.csv', index_col='clip', squeeze=True)
df['best'] = pd.read_csv('../submissions/140930-predict.10.csv', index_col='clip', squeeze=True)
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pd.scatter_matrix(df[['gb','rf','rfpca','dbn','best']],figsize=(6, 6), diagonal='kde');
constant from 140929-test-validate
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w_gb = 0.4
w_rf = 0.8
w_rfpca = 0.4
w_dbn = 0.6
s = w_gb + w_rf + w_rfpca + w_dbn
w_gb /= s
w_rf /= s
w_rfpca /= s
w_dbn /= s
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w_gb, w_rf, w_rfpca, w_dbn
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df['preictal'] = w_gb * df['gb'] + w_rf * df['rf'] + w_rfpca * df['rfpca'] + w_dbn * df['dbn']
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df['preictal'].to_csv('../submissions/141001-predict.4.csv', header=True)
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!head ../submissions/141001-predict.2.csv
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pd.scatter_matrix(df[['best','preictal']])
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