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I am trying to create a model using glmnet, (currently using cv to find the lambda value) and I am getting an error NA/NaN/Inf in foreign function call (arg 5). I believe this has something to do with the NA values in my data set, because when I remove all data points with NAs the command runs successfully.

I was under the impression that glmnet can handle NA values. I'm not sure where the error is coming from:

> res <- cv.glmnet(features.mat, as.factor(tmp[,"outcome"]), family="binomial")
Error in lognet(x, is.sparse, ix, jx, y, weights, offset, alpha, nobs,  : 
  NA/NaN/Inf in foreign function call (arg 5)

The dataset looks something like this:

> head(features.mat)
6 x 8 sparse Matrix of class "dgCMatrix"
   a b   c  e  f  g  h i
1  1 1 138 NA NA 15 NA .
4  1 3 171 NA NA 17 NA .
7  1 1 156 NA NA  5 NA .
8  1 4  97 NA NA  7 NA .
9  1 1 219 NA NA 11 NA .
10 1 . 263 NA NA 20 NA .
> head(as.factor(tmp[,"outcome"]))
[1] 0 0 0 0 0 0
Levels: 0 1
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1 Answer 1

up vote 1 down vote accepted

It appears that glmnet cannot handle NA values!

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This is also the error I've get. How did you solved the problem ? –  user2806363 Aug 9 at 16:18
    
A few different solutions exist: 1) The approach I took was to create a second column col_x_is_na. Where the column is NA, this secondary column gets set to true. After creating this second column, you can set all NA values to 0. The secondary flag column will offset the values in the original column. 2) exclude these columns 3) impute the cells with NA values 4) use a package that can handle NA values, for example, ada –  mgoldwasser Aug 11 at 13:31

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