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 want to find the minimum value aggregating by gene:

a <- data.frame(probe=c("probe1","probe2","probe3","probe4"), gene=c("gene1","gene1","gene2","gene1"), value=c(.001,.1,.05,.001))
#   probe  gene  value
# 1 probe1 gene1 0.001
# 2 probe2 gene1 0.100
# 3 probe3 gene2 0.050
# 4 probe4 gene1 0.001

So I did this:

    aggregated <- aggregate(value~gene, data=a, FUN=min)
#    gene value
# 1 gene1 0.001
# 2 gene2 0.050
b <- merge(aggregated, a) 
#    gene value  probe
# 1 gene1 0.001 probe1 
# 2 gene1 0.001 probe4 
# 3 gene2 0.050 probe3

But because probe1 and probe4 have the same value, gene1 is duplicated, and then I need to choose one of the two columns (no matter which one). So I could do this:

c <- aggregate(b, by=list(b$gene), function(x) x[1])[,-1]
#    gene value  probe
# 1 gene1 0.001 probe1
# 2 gene2 0.050 probe3

The problem is that I use this in a loop, so it will give an error if I apply it on a dataframe without duplicates:

aggregate(c, by=list(b$gene), function(x) x[1])[,-1]
# Error in aggregate.data.frame(c, by = list(b$gene), function(x) x[1]) : arguments must have same length

I could check for the existence of duplicate probe-gene pairs before applying the second aggregate but I'm sure there's a better way.

EDIT: there was a mistake in my code. This actually works perfectly

b <- merge(aggregate(value~gene, data=a, FUN=min), a); 
aggregate(b, by=list(b$gene), function(x) x[1])[,-1]

But the question remains, is there a less roundabout way to do this?

share|improve this question
There is a mistake in your code. In the final line, it should be by=list(c$gene) not by=list(b$gene). Then it doesn't give you an error. –  nograpes Jul 3 '12 at 16:25
oh, good catch. Still, is this the best way to do this? –  nachocab Jul 3 '12 at 17:05
Is this what you need? library(plyr); ddply(a, .(gene), function(x) x[which.min(x$value),]) –  kohske Jul 3 '12 at 17:15
Thanks @kohske, that actually works, but for my 45K row real dataset it takes 10+ minutes, as opposed to the few seconds it takes to do b <- merge(aggregate(value~gene, data=a, FUN=min), a); aggregate(b, by=list(b$gene), function(x) x[1])[,-1] –  nachocab Jul 3 '12 at 18:11

1 Answer 1

up vote 1 down vote accepted

An option is to use package: data.table. This should be very fast:

a <- data.table(a)
setkeyv(a, c("gene"))

a[, list(min(value), probe[which.min(value)]), by = gene]
share|improve this answer
I've never used data.table. I'll have to check it out! –  nachocab Jul 3 '12 at 21:09

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.