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How do I subset a dataframe so that only rows that contain columns that have a value that shows up a certain amount of times in other rows are included.

For example, if I have a column labeled Food, how would I filter out all rows that have a food that shows up less than 5 times in the whole dataframe?

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I predict a solution will involve table and %in%. –  joran Jul 22 '11 at 22:06
    
@Joran: Ya, first thing I did was make a table, just wasn't sure how to connect that as a way to filter the dataframe. –  Kyle Brandt Jul 22 '11 at 22:08

3 Answers 3

up vote 7 down vote accepted

Here's a quick example:

dat <- data.frame(x=runif(50),y=sample(letters,50,replace = TRUE))
dat[dat$y %in% names(table(dat$y))[table(dat$y) > 2],]

That selects all rows that contain a letter that appears more than twice.

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Did you just predict your own answer? And does that count as true foresight? I'll upvote anyway, because your answer is simple and works. –  Seth Jul 22 '11 at 22:16
1  
@Seth - I'm waiting to get (back) on a plane, so I started with a comment, thinking I wouldn't have time for more. But then it seemed I had a few minutes, so I wrote the answer...at the moment I predict that I will have a very long day in airports. :( –  joran Jul 22 '11 at 22:18
    
Works, only caveat in my case (which I didn't state) was that since this is a factor, the boxplot still shows all of the levels along the X axis, instead of just the ones with values. –  Kyle Brandt Jul 22 '11 at 22:23
1  
droplevels() should address that. –  joran Jul 22 '11 at 22:25
    
Ah, that can be fixed with drop=T –  Kyle Brandt Jul 22 '11 at 22:26

I'm a fan of ave for problems like this. Using the example data from @joran's answer:

set.seed(21)
dat <- data.frame(x=runif(50), y=sample(letters,50,replace=TRUE))
foo <- dat[dat$y %in% names(table(dat$y))[table(dat$y) > 2],]
bar <- subset(dat, ave(rep(1,nrow(dat)), dat$y, FUN=sum) > 2)
identical(foo,bar)
# [1] TRUE
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Here is another approach (probably cleaner) using plyr.

ddply(dat, .(y), subset, length(x) > 2)
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