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I aggregate() the value column sums per site levels of the R data.frame given below:

set.seed(2013)
df <- data.frame(site = sample(c("A","B","C"), 10, replace = TRUE),
                 currency = sample(c("USD", "EUR", "GBP", "CNY", "CHF"),10, replace=TRUE, prob=c(10,6,5,6,0.5)),
                 value = sample(seq(1:10)/10,10,replace=FALSE))

df.site.sums <- aggregate(value ~ site, data=df, FUN=sum)
df.site.sums

#  site value
#1    A   0.2
#2    B   0.6
#3    C   4.7

However, I would like to be able to specify the row order of the resulting df.site.sums. For instance like:

reorder <- c("C","B","A")
?special_sort(df, BY=site, ORDER=reorder) # imaginary function
#  site value
#1    C   4.7
#2    B   0.6
#3    A   0.2

How can I do this using base R? Just to be clear, this is essentially a data frame row ordering question where the context is the aggregate() function (which may or may not matter).

This is relevant but does not directly address my issue, or I am missing the crux of the solution.


UPDATE

For future reference, I found a solution to ordering a data.frame's rows with respect to a target vector on this link. I guess it can be applied as a post-processing step.

df.site.sums[match(reorder,df.site.sums$site),]
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1 Answer 1

up vote 2 down vote accepted

This may be a possibility: convert 'site' to a factor and specify the order in levels.

df$site2 <- factor(df$site, levels = c("C", "B", "A"))
aggregate(value ~ site2, data = df, FUN = sum)

#   site2 value
# 1     C   4.7
# 2     B   0.6
# 3     A   0.2

Update following @Ananda Mahto's comment (thanks!). You can use the 'non-formula' approach of aggregate:

reorder <- c("C", "B", "A")
with(df, aggregate(x = list(value = value),
                   by = list(site = factor(site, levels = reorder)),
                   FUN = sum))
#   site value
# 1    C   4.7
# 2    B   0.6
# 3    A   0.2

Or, converting to factor within the formula interface, and rename the converted site column:

df2 <- aggregate(value ~ factor(site, levels = c("C", "B", "A")),
                 data = df, FUN = sum)
df2
names(df2) <- c("site", "value")
df2
share|improve this answer
    
Thanks Henrik, is there an alternative to specify the order after or during the aggregate()? –  Zhubarb Dec 16 '13 at 11:52
    
I see that you already have updated your question with an 'after alternative'. I was going to point you to something similar. Right now I don't know about a clean 'during' alternative. –  Henrik Dec 16 '13 at 12:11
2  
@Zhubarb, there is also the non-formula approach to aggregate. with(df, aggregate(list(value = value), list(site = factor(site, reorder)), FUN=sum)). Henrik, you can also use factor in the formula version, but the resulting column names are funky, so renaming would be required. –  Ananda Mahto Dec 16 '13 at 13:22
    
@AnandaMahto, Thanks a lot for suggesting the non-formula approach. i add it to the answer. Cheers. –  Henrik Dec 16 '13 at 13:27
    
@AnandaMahto, yes, I tried using factor in the formula version before I posted my first answer, but skipped it due to the funkiness of the names. I haven't tried specifying x as a list before - useful indeed to be able to set the names of the results column right away. Cheers. –  Henrik Dec 16 '13 at 13:39

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