I am running a multi-level model. I use the following commands with validatedRS6 as the outcome, random as the predictor and clustno as the random effects variable.

new<-as.data.frame(read.delim("BABEX.dat", header=TRUE))
model1<- glmer(validatedRS6 ~ random + (1|clustno), data=new, family=binomial("logit"), nAGQ = 1L)

However, I get the following error

Error in do.call(new, c(list(Class = "glmResp", family = family), ll[setdiff(names(ll), : 'what' must be a character string or a function

I have absolutely no idea what has gone wrong and have searched the internet. I am sorry but I cannot provide the data as it is from an intervention which has yet to be published.

  • You need to at least post the results of str(new). (Also but probably tangential, you should not need to wrap as.data.frame around the results of read.delim.)
    – IRTFM
    Commented Nov 6, 2013 at 0:14
  • 1
    I can reproduce this by simply having a variable called 'new' in my global environment. Will fix. Workaround: new2 <- new; rm("new"); glmer(..., data=new2, ...)
    – Ben Bolker
    Commented Nov 6, 2013 at 0:43

1 Answer 1


(expanded from comment).

Congratulations, you found a bug in lme4! This is fixed now:


It is caused by having a variable called new in the global environment (deep in the guts of the code, lme4 uses do.call(new,...) and finds your variable new rather than the built-in function new).

You can install a patched version from Github using devtools::install_github() (but you'll need compilation tools etc.). Alternately, there is a very simple workaround -- just call your variable anything other than new (you can't just copy it, i.e. new2 <- new -- you also have to make sure the old version is removed (rm("new"))).

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