I'm trying to find a package in R for regularized logistic regression that predicts values between 0 - 1. I haven't had much luck though, having tried the
lars package and now the
Below is code from the example in the reference manual for the glmnet package and I don't understand the output.
library(glmnet) set.seed(1010) n=1000;p=100 nzc=trunc(p/10) x=matrix(rnorm(n*p),n,p) beta=rnorm(nzc) fx= x[,seq(nzc)] %*% beta eps=rnorm(n)*5 y=drop(fx+eps) px=exp(fx) px=px/(1+px) ly=rbinom(n=length(px),prob=px,size=1) set.seed(1011) cvob2=cv.glmnet(x,ly,family="binomial") plot(cvob2) # had to add this comment to allow edit coef(cvob2) predict(cvob2,newx=x[1:5,], s="lambda.min") 1 [1,] -1.721438 [2,] 0.914219 [3,] 1.111685 [4,] 1.805725 [5,] -4.200433
I don't understand why the output is not all within the 0 - 1 range.
Am I misunderstanding something here?
Can anyone recommend an easy to use package for regularized logistic regression?