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I have insufficient knolwedge on the use of tryCatch() but have found it hard to find a good solution in the ongoing discussions.

I have a self-programmed function which returns an object. It is actually a list object, but for simplicity assume it is a scalar. I am using a for() loop to bootstrap this function. My loop is of the following form:

boot<-1000
for(i in 1:boot){
  bootstrap_data<-data[sample(nrow(data),nrow(data),replace=T),]
  out[i]<-myfunction(bootstrap_data,X,...)
}

myfunction() sometimes returns an error message, because it uses lm() to fit a model on a subset of the data and then predict new data from a different subset. Then it can happen that for certain factors some levels by chance do not appear in the data used to fit, but they do appear in the prediction subset. This does happen very rarely (say, roughly every 15,000 iterations), but it does happen (I need to bootstrap myfunction() a lot of times).

I want to use tryCatch() or a similar function to catch my bootstrap loop. Furthermore, I would like to define an index that counts how often across the loops tryCatch() had to catch the function. Finally, I would like to have a constant number boot regardless of the number of times the error occured.

R returns the following message:

    Error in model.frame.default(Terms,newdata,na.action=na.action,
xlev=object$xlevels) : factor X has new levels 2

X is a user specified predictor in lm(). I am not sure what 2 stands for, I guess the number of new levels(?).

share|improve this question
    
When I need to do this, I catch the warnings and errors in a list and process afterwards. See stackoverflow.com/q/4948361/210673. If you need to do this many times, it might be too slow for you, but might help in giving you some helpful ideas. – Aaron Apr 10 '13 at 17:01
up vote 2 down vote accepted

Wrapping the function that sometimes throws an error in a "try" usually works for me.

boot<-1000
for(i in 1:boot){
  bootstrap_data<-data[sample(nrow(data),nrow(data),replace=T),]
  out[i] = NA  #
  try({      
    out[i]<-myfunction(bootstrap_data,X,...)
  }, silent=T)
}

If you want to count the number of errors thrown you can sum up the NA's in out.

sum(is.na(out))
share|improve this answer
    
Try seems to work for my purposes! Thanks. – tomka Apr 16 '13 at 13:45

Here's a function that sometimes fails

f <- function() {
    r <- rnorm(1)
    if (r > 1)
        stop("oops")
    r
}

we allocate a result vector and set up a counter to update the ith element

out <- numeric(100)
i <- 0

then repeatedly try to call the function. If there's an error, we don't increment i or record the result, but instead go directly to the next iteration

while (i < length(out)) {
    tryCatch({
        out[[i + 1]] <- f()
        i <- i + 1
    }, error=function(...) NULL)
}
share|improve this answer
    
Is it also possible to use try instead of tryCatch in your example? – tomka Apr 10 '13 at 23:05
    
@tomka updated to illustrate try, too. – Martin Morgan Apr 10 '13 at 23:24
    
Your answer is very similar to kith's. Thanks. – tomka Apr 16 '13 at 13:45
    
@tomka ok removed the try illustration you requested earlier. – Martin Morgan Apr 16 '13 at 13:47
    
Both answers are OK, accepted the one given earlier. – tomka Apr 16 '13 at 13:49

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