# Aggregate by factor levels, keeping other variables in the resulting data frame

I'm trying to calculate the minimum values of a numeric column for each level of a factor, while keeping values of another factor in the resulting data frame.

``````# dummy data
dat <- data.frame(
code = c("HH11", "HH45", "JL03", "JL03", "JL03", "HH11"),
index = c("023434", "3377477", "3388595", "3377477", "1177777", "023434"),
value = c(24.1, 37.2, 78.9, 45.9, 20.0, 34.6)
)
``````

The result I want is the minimum of `value` for each level of `code`, keeping `index` in the resulting data frame.

``````# result I want:
#   code value    index
# 1 HH11  24.1   023434
# 2 HH45  37.2  3377477
# 3 JL03  20.0  1177777

# ddply attempt
library(plyr)
ddply(dat, ~ code, summarise, val = min(value))
#   code   val
# 1 HH11  24.1
# 2 HH45  37.2
# 3 JL03  20.0

# base R attempt
aggregate(value ~ code, dat, min)
#   code value
# 1 HH11  24.1
# 2 HH45  37.2
# 3 JL03  20.0
``````
-

You need to use `merge` on result of `aggregate` and original `data.frame`

``````merge(aggregate(value ~ code, dat, min), dat, by = c("code", "value"))
##   code value   index
## 1 HH11  24.1  023434
## 2 HH45  37.2 3377477
## 3 JL03  20.0 1177777
``````
-
beat me by seconds! –  Chris Apr 26 at 1:24

Just to show that there's always multiple ways to skin a cat:

Using `ave` to get the indexes of the minimum rows in each group:

``````dat[which(ave(dat\$value,dat\$code,FUN=function(x) x==min(x))==1),]

#  code   index value
#1 HH11  023434  24.1
#2 HH45 3377477  37.2
#5 JL03 1177777  20.0
``````

This method also has the potential benefit of returning multiple rows per `code` group in the instance of multiple values being the minimum.

And another method using `by`:

``````do.call(rbind,
by(dat, dat\$code, function(x) cbind(x[1,c("code","index")],value=min(x\$value)))
)
#      code   index value
# HH11 HH11  023434  24.1
# HH45 HH45 3377477  37.2
# JL03 JL03 3388595  20.0
``````
-

Well, a few minutes more searching would have gotten me there... this answer seems to do the trick:

merge(dat, aggregate(value ~ code, dat, min) )

-
``````library(plyr)