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I have a large data table (from the package data.table) with over 60 columns (the first three corresponding to factors and the remaining to response variables, in this case different species) and several rows corresponding to the different levels of the treatments and the species abundances. A very small version looks like this:

library(data.table) TEST<-data.table(Time=c("0","0","0","7","7","7","12"), Zone=c("1","1","0","1","0","0","1"), quadrat=c(1,2,3,1,2,3,1), Sp1=c(0,4,29,9,1,2,10), Sp2=c(20,17,11,15,32,15,10), Sp3=c(1,0,1,1,1,1,0))


    Time Zone quadrat Sp1 Sp2 Sp3
1:    0    1       1   0  20   1
2:    0    1       2   4  17   0
3:    0    0       3  29  11   1
4:   12    1       1  10  10   0
5:    7    1       1   9  15   1
6:    7    0       2   1  32   1
7:    7    0       3   2  15   1  

I first want to calculate the mean abundances of each species across Time for each Zone x quadrat combination and that's fine:

> Abundance = TEST[,lapply(.SD,mean),by="Zone,quadrat"]
> Abundance
   Zone quadrat Time       Sp1  Sp2       Sp3
1:   Z1       1   NA  6.333333 15.0 0.6666667
2:   Z1       2   NA  2.500000 24.5 0.5000000
3:   Z0       1   NA 15.500000 13.0 1.0000000  

But then I want to sum across each row for the 'species' columns, in the example from Sp1 to Sp3. I have tried the following code with no success:

 > Abundance$SumAbundance <- rowSums(Abundance[,c(4:6)])  

I get the error message:
Error in rowSums(Abundance[, c(4:6)]) : 'x' must be an array of at least two dimensions

This is just the first step to a series of calculation I need to do with this data so any help would be greatly appreciated. Thanks

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2 Answers 2

up vote 4 down vote accepted

Actually type Abundance[, c(4:6)] to see what the result is and it'll be clear to you why that didn't work. It can be corrected by using with = FALSE, but the better syntax (with less copying) is:

Abundance[, SumAbundance := rowSums(.SD), .SDcols = 4:6]

Also, I didn't check, but I have a suspicion this will be faster, since it will not convert to matrix as rowSums does:

Abundance[, SumAbundance := Reduce(`+`, .SD), .SDcol = 4:6]
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Hi @eddi, that's great it works. Could you explain why the original version (Abundance[, c(4:6)]) did that? –  Claire G Feb 18 '14 at 16:21
@ClaireG see point 1.1 in the FAQ –  eddi Feb 18 '14 at 16:22

An alternative (data.table) approach would be to store your data in long form. Version 1.8.11 of data.table has fast melt and dcast methods

mt <- melt(test, id=1:3,variable.name='Species')

abundance <- mt[,list(abundance = mean(value)),by=list(Zone,quadrat,Species)][, 
                sumAbundance := sum(abundance), by = list(Zone,quadrat)]

Working in long format will take a slight change in thinking, but it may end up being more efficient memory wise (as less internal copying will be involved, and you are referencing a single not multiple elements within every "by" group.)

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I'm afraid this does not work and I'm not sure it's the best way anyways as I have 63 species (variables) in my actual dataset... –  Claire G Feb 19 '14 at 15:30
ok, after struggling to update to version 1.8.11 of data.table (sorry...), the commands do work but it's not what I want to do: I want to sum the species means, so the commands suggested above by @eddi are the way for me. –  Claire G Feb 19 '14 at 16:27
@ClaireG --I've altered my example. Working in "long" form will take a bit of getting used to. –  mnel Feb 19 '14 at 22:26

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