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I have a data set along these lines:

df<-data.frame(sp=c(100, 100, 100, 101, 101, 101, 102, 102, 102),
type=c("C","C","C","H","H","H","C","C","C"),
country=c("A", "A", "A", "B", "B", "B", "C", "C", "C"),
vals=c(1,2,3,4,5,6,7,8,9)
)

I want to aggregate df$vals and bring the other variables through as well

At the moment I'm doing it like this:

multi.func<- function(x){
c(
n = length(x),
min = min(x, na.rm=TRUE),
max = max(x, na.rm=TRUE),
mean = mean(x, na.rm=TRUE)
)}

aggVals<-as.data.frame(do.call(rbind, by(df$vals, df$sp, FUN=multi.func, simplify=TRUE)))
aggVals$sp<-row.names(aggVals)

aggDescrip<-aggregate(cbind(as.character(type), as.character(country)) ~ sp, data=df, FUN=unique)

result<-merge(aggDescrip,aggVals)

This works well enough but I wondered if there's an easier way.

Thanks

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2 Answers 2

up vote 3 down vote accepted

Perhaps you should look into the data.table package.

library(data.table)
DT <- data.table(df, key="sp")
DT[, list(type = unique(as.character(type)), 
          country = unique(as.character(country)), 
          n = .N, min = min(vals), max = max(vals), 
          mean = mean(vals)), by=key(DT)]
#     sp type country n min max mean
# 1: 100    C       A 3   1   3    2
# 2: 101    H       B 3   4   6    5
# 3: 102    C       C 3   7   9    8

If you want to stick with base R, here is another approach that might be of use (though aggregate is probably more common):

unique(within(df, {
    mean <- ave(vals, sp, FUN=mean)
    max <- ave(vals, sp, FUN=max)
    min <- ave(vals, sp, FUN=min)
    n <- ave(vals, sp, FUN=length)
    rm(vals)
}))
#    sp type country n min max mean
# 1 100    C       A 3   1   3    2
# 4 101    H       B 3   4   6    5
# 7 102    C       C 3   7   9    8

Update: A variation on your initial attempt

I would suggest sticking with data.table if possible, because the resulting code is easy to follow and the process of aggregation is quick.

However, with a little bit of modification, you can have (yet another) base R approach that is somewhat more direct.

First, modify your function so that instead of using c(), use data.frame. Also, add an argument that specifies which column needs to be aggregated.

multi.func <- function(x, value_column) {
    data.frame(
        n = length(x[[value_column]]),
        min = min(x[[value_column]], na.rm=TRUE),
        max = max(x[[value_column]], na.rm=TRUE),
        mean = mean(x[[value_column]], na.rm=TRUE))
}

Second, use lapply on your dataset, split up by your grouping variable, merge the output with your original dataset, and return the unique values.

unique(merge(df[-4], 
             do.call(rbind, lapply(split(df, df$sp), 
                                   multi.func, value_column = "vals")),
             by.x = "sp", by.y = "row.names"))
share|improve this answer
    
Thanks for both answers. I'll use the ave method for now as I have to share code with people who only use base R. I spotted data.table on the #rstats twitter feed last week - been meaning to give it a try as it looks fantastic. –  Ed G Dec 17 '12 at 16:08
    
@EdG, well, now there are three answers ;) The data.table package is awesome for a lot of stuff, quick aggregation by groups just being one of them. –  Ananda Mahto Dec 17 '12 at 16:25
    
Third answer is really helpful - thanks again. I've gone with that one as I've got ore than one set of values to aggregate. Will definitely check data.frame too –  Ed G Dec 18 '12 at 11:14

Using just aggregate:

result <- aggregate(vals ~ type + sp + country, df, 
    function(x) c(length(x), min(x), max(x), mean(x))
)

result
  type  sp country vals.1 vals.2 vals.3 vals.4
1    C 100       A      3      1      3      2
2    H 101       B      3      4      6      5
3    C 102       C      3      7      9      8

colnames(result)
[1] "type"    "sp"      "country" "vals"  

The above seems to create a weird "multi-value" column. But summaryBy from the doBy package is similar to aggregate but will allow an output with multiple columns:

library(doBy)
result <- summaryBy(vals ~ type + sp + country, df, 
    FUN=function(x) c(n=length(x), min=min(x), max=max(x), mean=mean(x))
)

result
  type  sp country vals.n vals.min vals.max vals.mean
1    C 100       A      3        1        3         2
2    C 102       C      3        7        9         8
3    H 101       B      3        4        6         5

colnames(result)
[1] "type"      "sp"        "country"   "vals.n"    "vals.min"  "vals.max" 
[7] "vals.mean"
share|improve this answer
1  
Hi - thanks for your reply. When I run this code I get four variables and the last one ($vals) seems to have n, min, max and mean stacked on top of each other. Have I done something wrong? –  Ed G Dec 17 '12 at 15:37
    
@EdG yes that's supposed to happen but I didn't realise they were all part of one column. Try the other answer here or look at this question. Both suggest using data.table as an alternative. –  Mattrition Dec 17 '12 at 16:00
    
thanks very much for your help –  Ed G Dec 17 '12 at 16:06
    
@EdG See my edit for a working alternative to aggregate. –  Mattrition Dec 17 '12 at 16:09
    
Thank you, that's really helpful. Must learn more about doBy! –  Ed G Dec 18 '12 at 11:16

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