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I'm trying to simplify a task in R. I have a community matrix as such:

row.name   species1  species2 species3 species4 .... species50
sample 1      1         6        156      4              1
sample 2      0        20        34       5              1
sample 3      3         7        23       0              7
....
sample 10     3        15        9        7              6

These are raw count figures

I'm trying to code (but getting nowhere) a means by which I can cap any species which occurs >10% in a sample/row, to 9%. I.e in this (made up) example it would seem sample1/species3 may need capping.

I would like the the data kept as/reverted back to a raw count. Is this even possible within R?

I'm aware of the ecology transformations in vegan or equivalent to normalise/standardise data, but they are not what I am after here.

I hope that makes sense. If not I can try explain again. Any help greatly appreciated, still fairly new with R.

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  • Do you mean any value in the matrix > 10 should be replaced with 9? On re-read, probably not. But 10% of what? Of row sums? Column sums? Jan 19, 2016 at 23:20
  • Sorry, 10% of row sum
    – Geoff
    Jan 19, 2016 at 23:46
  • this might get tricky if there are two species whose counts are greater than 10% - once you change one species' count you may find that another species count jumps up to comprising >=10% of the rowsum because the rowsum is dynamic, then you're moving into optimisation territory I think. do the replaced counts have to equal 9% exactly?
    – Elliot
    Jan 20, 2016 at 0:03
  • Yes, this was my thought. I was wondering whether R could respond/balance this dynamically. They don't have to equal 9% exactly, but <10% .. typically in my datasets majority of species comprise 1-7% of each sample. One or two will be greater than 10% (v. v. rarely 3).
    – Geoff
    Jan 20, 2016 at 0:11
  • I'll add optimisation to the tags!
    – Geoff
    Jan 20, 2016 at 0:14

1 Answer 1

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I would use sweep(), but specify pmin as the function so that it takes the smaller of 10% and the actual value:

M <- read.table(header=TRUE, row.names = 'row.name', 
text='row.name   species1  species2 species3 species4  species50
sample_1      1         6        156      4              1
sample_2      0        20        34       5              1
sample_3      3         7        23       0              7
sample_10     3        15        9        7              6') 

M <- as.matrix(M)

sweep(M, 1, rowSums(M) %/% 10, pmin)
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  • Thanks, I'll check this out, which package is sweep in? :)
    – Geoff
    Jan 20, 2016 at 0:43
  • @Geoff The return of the possibly adjusted raw values was a real challenge to me. Your approach is very clever! Jan 20, 2016 at 0:46
  • sweep(Data, 1, rowSums(Data) %/% 10, pmin) Error in FUN(x, aperm(array(STATS, dims[perm]), order(perm)), ...) : (list) object cannot be coerced to type 'double' I get this error? (sorry I cant work out how to make that look like r script)
    – Geoff
    Jan 20, 2016 at 0:48
  • You can't use a data.frame, you have to convert to a matrix first.
    – Neal Fultz
    Jan 20, 2016 at 0:49
  • oh ok (ignore answer below!!)
    – Geoff
    Jan 20, 2016 at 0:55

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