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I have two matrix one X with all the feature values with 300000 rows and 14 columns, where columns represent the feature ids. for each I have another variable which defines labels Y which is of dimension 300000 x 1 either 0 or 1.

How do I calculate logistic regression from this matrix ?

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@Seth, your link is directed to your local host. Find one online and paste that. – Roman Luštrik Jul 22 '12 at 7:23
    
Here is a link to a walkthrough nlp.stanford.edu/~manning/courses/ling289/logistic.pdf – Seth Jul 22 '12 at 15:48
up vote 6 down vote accepted

This is surprisingly easy.

m <- glm(Y ~ X, family = 'binomial')
summary(m)

In the future just try typing what seems obvious first. You'll learn much faster if you're not afraid of making mistakes.

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@Brandon Bertelsen - How does your comment relate to this concise and helpful answer? – Roland Jul 21 '12 at 8:20
    
I think it was a protest to a prior wording Roland. I had a question in that I think was taken as accusatorial when it was really just a question. – John Jul 22 '12 at 0:06

glmnet will also be ok for your problem

glm1=cv.glmnet(x,y,family="binomial",alpha=0)

prglm=predict(glm1,newx,type="response")
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