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I have a GLM, family=binomial(link=logit) model that I apply within a predict() function, seen below. The predict values go beyond zero and 1, but I would like to keep them as probabilities. So I use the binomial()$inverse command that can be then be used in the apply function.

This worked just fine the first time I ran it, but after closing R down and starting again, I now get this error:

     Error in get(as.character(FUN), mode = "function", envir = envir) : 
     object 'ilogit' of mode 'function' was not found"

I've been struggling with this for hours, as this code normally worked. Does anyone have an idea about what I am doing wrong? Is there a better way of doing this?

My code is below. I've also tried other variation but can't get it to work.

    ## predicted probabilities 
    pp <- predict(logit_model,
            newdata=data,
            type="link",
            se.fit=T)

   ilogit <- binomial()$inverse
   yhat_prob <- lapply(pp,ilogit) #converts to probabilities
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Use type="response" in your predict call to get the probabilities –  James Mar 7 '12 at 22:55
    
Thanks James, but unfortunately, the type "response" does not get the values I need. If I can get the ilogit object to work, then I can get the correct estimates... –  Captain Murphy Mar 7 '12 at 23:05
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1 Answer

up vote 4 down vote accepted

If you want the probabilities, you can have them directly with type="response", as explained in the documentation, ?pregict.glm.

For the error message you get, you probably need binomial()$linkinv.

> str( binomial() )
List of 12
 $ family    : chr "binomial"
 $ link      : chr "logit"
 $ linkfun   :function (mu)  
 $ linkinv   :function (eta)  
 $ variance  :function (mu)  
 ...

The lack of error was probably due to some package you had loaded, which defined an ilogit function.

share|improve this answer
    
Thanks Vincent. Yes, I went down this path earlier,and this does get me probabilities directly. But the ilogit/lapply function gave me nice parametric plots. With linkinv or response, I get jagged plots that don't look right using the yhat_prob$fit. I had it working this morning; this is really frustrating! –  Captain Murphy Mar 7 '12 at 23:21
    
ahhh, I got it working! I'll give you the check for the detailed response, and also I think you were right about the ilogit function. It is part of the faraway package, which I had on this morning. –  Captain Murphy Mar 7 '12 at 23:28
2  
For future reference, you can also use plogis on the linear predictor to get the inverse logit transform, without having to make an ilogit function. –  Hong Ooi Mar 8 '12 at 1:02
2  
Note also that back-transforming the standard errors is likely to give you gibberish. –  Ben Bolker Mar 8 '12 at 3:57
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