Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

I have a dataset, which is broken into 20 groups. The matrices storing the data for each group (2 columns of data), are stored in a list, so that I can perform functions on each set within a loop. I would like to store the output of any function that I might run in another matrix.

For example, if I run a fitdistr() on all 20 groups, I would like the output of the function stored in a matrix, so that I can call distribution[1] to call the results from group 1. I have tried the following:


for(i in (1:20))
  { distribution[[i]]<-fitdistr(as.numeric(data[[i]]$Column2,"normal") }

This sucessfully stores the outputs, and I can call:


The issue is that the fitdistr() results in 2 columns of data - a mean and a standard deviation. I checked that I cannot call the mean for a given point:


So I obviously cannot call get the means, say by:


I will be looking for trends in the means and standard deviations (and other parameters for other distributions), so I would like to have the results of fitdistr() stored in a matrix somehow if at all possible. Even if I could somehow call only say, the mean, when running the function, then I can just create an empty vector and populated it in a loop, then repeat for the standard deviation.

I have considered creating an empty matrix large enough to store the data (so it would be 20 rows, 1 for each group, and 2 columns, 1 for each calculated value). I'm still not sure how I would dictate that I want the calculated mean stored in column 1 and the calculated standard deviation stored in column 2. Again, it is an issue of asking the function for only one of its multiple outputs at a time.

I've also looked into one of the apply functions, but these do not seem to be appropriate for what I am doing.

share|improve this question
Try doing distribution[[1]]$mean (note the two brackets). Also shouldn't it be estimate, not mean? – David Robinson Mar 14 '13 at 3:45
ls() is a function that lists the objects in a given enviroment. It returns a character vector. – mnel Mar 14 '13 at 3:46
ah, yes. I did mean list() – user2154249 Mar 14 '13 at 4:22

ls() is a function that lists the objects in a given environment. It returns a character vector.

You (probably) mean to have list().

But then you would be growing your list within a loop. Which is the second circle of R hell.

Instead use lapply with the appropriate function (hard to tell where you want the as.numeric to go, but it is not correct in your example).

something like..

distribution <- lapply(data, function(x) fitdistr(as.numeric(x[['Column2']]),"normal")) 
share|improve this answer
The as.numeric is there because I have a large dataset, which has been binned. Each bin retained the headers in the original data, so when I was trying to run the fitdistr() function on the data, I was getting an error. I'm trying out the line of code you suggested. I'm getting some errors, but I'll keep looking at it and see if I can get it working. I think one issue I may encounter, based on this error: Error in .subset2(x, i, exact = exact) : attempt to select less than one element is the fact that some of my bins have zero data points in it. – user2154249 Mar 14 '13 at 4:21
@user2154249 -- without a reproducible example I can't help much more. – mnel Mar 14 '13 at 4:26

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.