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I need to know how to return the logistic regression coefficients in such a manner that I can generate the predicted probabilities myself.

My code looks like this:

lr = LogisticRegression()
lr.fit(training_data, binary_labels)

# Generate probabities automatically
predicted_probs = lr.predict_proba(binary_labels)

I had assumed the lr.coeff_ values would follow typical logistic regression, so that I could return the predicted probabilities like this:

sigmoid( dot([val1, val2, offset], lr.coef_.T) )

But this is not the appropriate formulation. Does anyone have the proper format for generating predicted probabilities from Scikit Learn LogisticRegression? Thanks!

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up vote 3 down vote accepted

take a look at the documentations (http://scikit-learn.org/stable/modules/generated/sklearn.linear_model.LogisticRegression.html), offset coefficient isn't stored by lr.coef_

coef_ array, shape = [n_classes-1, n_features] Coefficient of the features in the decision function. coef_ is readonly property derived from raw_coef_ that follows the internal memory layout of liblinear. intercept_ array, shape = [n_classes-1] Intercept (a.k.a. bias) added to the decision function. It is available only when parameter intercept is set to True.

try:

sigmoid( dot([val1, val2], lr.coef_) + lr.intercept_ ) 
share|improve this answer
    
#prgao, thanks ,but your answer only tells me how NOT to generate the probabilities. Do you know how to compute them? Thanks. – zbinsd Sep 24 '13 at 23:57
2  
sigmoid( dot([val1, val2], lr.coef_) + lr.intercept_ ) – prgao Sep 25 '13 at 0:07
1  
#prgao, that did it. Damn, I figured this would have worked sigmoid( dot([val1, val2, 1], lr.coef_.T)), but it turns out, I need to include the intercept twice, as in: sigmoid( dot([val1, val2, 1], lr.coef_.T) + lr.intercept_ ). Thanks for pointing this out. – zbinsd Sep 25 '13 at 0:48
    
It can be shortened to: sigmoid( dot([val1, val2, 2], lr.coef_.T) ). Note the 2 value. This effectively adds an additional intercept term. – zbinsd Sep 25 '13 at 0:59

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