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Hi to all the community members, I check all the related questions, but I was unable to find a solution for this. I have the following DB

DB<-data.frame(ID=rep((1:10),10),DISTANCE=1:100,TIME=rep(1:20))

and I want to get the maximum value for the column DISTANCE for each ID with the related TIME,i.e:

result<-data.frame(ID=1:10,DISTANCE=91:100,TIME=11:20)

I already know that

aggregate(DB$DISTANCE,by=list(DB$ID),max)

could do part of the work, so how can I get the related value for the column TIME according to the maximum value of DISTANCE for each ID?

Many thanks in advance for the help!

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+1 for giving us the data, and showing the desired result. –  Paul Hiemstra Mar 29 '13 at 10:31

2 Answers 2

up vote 3 down vote accepted

You should use merge to get the TIME column back:

DB.a <- aggregate(data = DB, DISTANCE ~ ID, max)
merge(DB.a, DB)
#    ID DISTANCE TIME
# 1   1       91   11
# 2  10      100   20
# 3   2       92   12
# 4   3       93   13
# 5   4       94   14
# 6   5       95   15
# 7   6       96   16
# 8   7       97   17
# 9   8       98   18
# 10  9       99   19
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Thank you @Arun, I really appreciate..easy and without the need to add extra-packages! –  stefano Mar 29 '13 at 16:23

I'd do this using plyr:

library(plyr)
ddply(DB, .(ID), summarise, mx = max(DISTANCE), TIME = TIME[which.max(DISTANCE)])

ddply cuts up the data.frame according to the levels in ID. Then for each subset, it calculates max(DISTANCE), and finds the associated TIME using which.max.

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