Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I would like to know of a command to select columns based on some criteria. For example, suppose I had an N+5 column data frame (where N is arbitrary/unknown) like so:

>mydf
Name  Meta1 Meta2 ... MetaN A B C D
Alice a1    a2    ... aN    1 0 1 0 
Bob   b1    b2    ... bN    2 1 2 1

I would like to obtain the data frame below by using the fact that the column means of A and C are greater than 1 (or equivalently that the column means of B and D are less than 1).

>mydf
Name  Meta1 Meta2 ... MetaN A C
Alice a1    a2    ... aN    1 1 
Bob   b1    b2    ... bN    2 2

I have tried combining the subset command's "select" option with logical operations and the colMeans command to no avail. The closest I have gotten to getting this right in general is monstrously complex. I've tried looking for commands that can do this elegantly but haven't yet found any.

EDIT: The column names "Meta1" through "MetaN" should be thought of as place holders and not necessarily the actual names of the columns. They could for all intent and purposes be N random color names.

share|improve this question
add comment

2 Answers

There are several straightforward approaches. You can make use of the colMeans function here. This assumes your data.frame is called "mydf".

> mydf[c("Name", names(which(colMeans(mydf[-1]) > 1)))]
   Name A C
1 Alice 1 1
2   Bob 2 2
share|improve this answer
    
+1 - Variation on a theme: data.frame(mydf[1], mydf[-1][colMeans(mydf[-1]) > 1] ) –  thelatemail Jul 11 '13 at 6:32
    
Hey Ananda, I've tried to adapt your answer to my actual problem but have hit a wall. I've edited my question so that its slightly generalized and better reflects my issue. –  Christian Bueno Jul 11 '13 at 20:27
    
Make the simple change (where N is the your Nth column) mydf[c("Name", names(which(colMeans(mydf[-c(1:N)]) > 1)))] –  Metrics Jul 11 '13 at 21:10
    
@Metrics I think you mean N+1 in the code. Either way, that method will only omit columns 1 through N+1 for the colMeans computation which is good, but The final output would also leave out columns Meta1 to MetaN which I want to keep in. –  Christian Bueno Jul 11 '13 at 23:45
    
I see. Here is the solution for that : mydf[c("Name",paste("Meta",1:N,sep=""),names(which(colMeans(mydf[-c(1:N)]) > 1)))] –  Metrics Jul 12 '13 at 0:05
add comment
up vote 2 down vote accepted

Ok this works:

drop <- names(which(colMeans(mydf[-c(1, N+1)])<1))
mydf[!(colnames(mydf) %in% drop)]

The nice thing about this is that if in the data frame we had "Meta1" through "MetaN" replaced with names of N random colors like "Blue", "Indigo",... "Mustard" (resp.) this would still work. Even if the number of colors N is unknown but we know the last one is "Mustard", we just need to make a small modification. In the example using colors, we would just change "drop" to this,

drop <- names(which(colMeans(mydf[-c(1, which(colnames(mydf)=="Mustard")])<1))

and yield the same effect.

share|improve this answer
add comment

Your Answer

 
discard

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.