I'm looking for a good implementation for logistic regression (not regularized) in Python. I'm looking for a package that can also get weights for each vector. Can anyone suggest a good implementation / package? Thanks!
5 Answers
I notice that this question is quite old now but hopefully this can help someone. With sklearn, you can use the SGDClassifier class to create a logistic regression model by simply passing in 'log' as the loss:
sklearn.linear_model.SGDClassifier(loss='log', ...).
This class implements weighted samples in the fit()
function:
classifier.fit(X, Y, sample_weight=weights)
where weights is a an array containing the sample weights that must be (obviously) the same length as the number of data points in X.
See http://scikitlearn.org/dev/modules/generated/sklearn.linear_model.SGDClassifier.html for full documentation.

4supported by Olivier Grisel twitter.com/ogrisel/status/476367379413610497– r0u1iCommented Jun 10, 2014 at 14:22

1This uses onevsrest for multiclass problems and doesn't look like it supports the
multi_class='multinomial'
option inLogisticRegression
– akxlrCommented Aug 27, 2015 at 14:17
The “balanced” mode uses the values of y to automatically adjust weights inversely proportional to class frequencies in the input data as n_samples / (n_classes * np.bincount(y))
from sklearn.linear_model import LogisticRegression
model = LogisticRegression(class_weight='balanced')
model = model.fit(X, y)
EDIT
Sample Weights can be added in the fit method. You just have to pass an array of n_samples. Check out documentation 
Hope this does it...

This refer to class imbalance, but what if we want to use separate weight for each sample?– mrgloomCommented Mar 17, 2016 at 12:07

Good question @mrgloom ! You can specify the weights by supplying a dict of weights instead of "balanced". Weights associated with classes in the form {class_label: weight}. If not given, all classes are supposed to have weight one. Commented Mar 18, 2016 at 18:25

2I need separate weight for each sample, not for each class.– mrgloomCommented Mar 19, 2016 at 13:53

I dont think that comes off the shelf. You may have to use your own version of cost function and gradient descent update to do that. Commented Mar 20, 2016 at 19:02
I think what you want is statsmodels
. It has great support for GLM and other linear methods. If you're coming from R, you'll find the syntax very familiar.

Will this statsmodels solution also provide the pvalues for each dependent variable?– SapiensCommented Mar 17, 2021 at 0:34

Seems to only have weighted linear regression, not logistic. "w is not yet supported (i.e. w=1), in the future it might be var_weights" Commented Apr 26, 2022 at 1:38
Have a look at scikits.learn logistic regression implementation

sklearn.linear_model.LogisticRegression
is a class, hisfit
method let you defined weight.– oheCommented Sep 23, 2011 at 16:10 
@ohe how? I have found the
fit
method, but it only accepts parameters for labels and features. Not weights. Commented Sep 22, 2015 at 12:26 
@KentMuntheCaspersen my answer is quiet old! At this time the
fit
method took aclass_weight
parameter. It is now located in th__init__
. It might be what you're watching for.– oheCommented Sep 22, 2015 at 12:42 
@ohe That explains a lot. Thanks for coming back 4 years later. I think the question is about weighted instances for training, and not just class weights. At least, that is what I was searching for. Commented Sep 22, 2015 at 16:48
Do you know Numpy? If no, take a look also to Scipy and matplotlib.

3Scipy nor Numpy dot have any logistic regression implementation (or I couldn't find any...). matplotlib is mostly used for graphs, drawings, etc...– user5497Commented Sep 22, 2011 at 10:20

Thanks! I saw it, however it implements L2 regularized logistic regression (and not regular logistic regression), and in addition it didin't implement weights...– user5497Commented Sep 22, 2011 at 12:33