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I have a data frame presenting the number of trees at each plot (line) for each species (column).

I have 115 species of trees in columns and 6264 plots

head(esp)

         02 03 04 05 06 07 08S 09 10 11 12P 12V 13B 13C 13G 14 15P 15S 16 17C
  600005  0  0  0  0  0  0   0  0 16  0   0   0   0   0   0  0   0  32  0   0
  600008  0  0  0  0  0  0   0  0  0  0   0   8   0   0   0  0   0   0  0   5
  600012  0  0  0  0  0  0   0  0  0  0   0   0   0   0   0  0   0   0  0   0
  600030  3  0  0  5  0  0   0  0  0  0   0   0   0   0   0  0   0   0  0   0
  600033  0  0  0  0  0  0   0  0  0  0   0   0   0   0   0  0   0   0  0   0
  600035  0  0  0  1  0  0   0  0  0  0   0   0   0   0   0  0   0   0  0   0

I'm trying to calculate the proportion of each species present at each plot. I have tried to do this:

apply(esp,c(1,2), function(x){ifelse(x>0, x/sum(x)*100,0)})

What I would like to have is a data frame with the different plots as lines and the proportion of species present as column.

Thank you for your help.

I'm coming back just for a silly question: Now that I have my data frame with the proportion of each species at each plot, I want to select all the "pure" plots that have more than 80% of one species.

I know how to select the rows for one species:

pur<-prop[which(prop[,1]>80),]

This worked and gave me what I wanted but as I have 115 columns I have tried doing it with a loop:

for (i in 1:115){
prop[which(prop[,i]>80),]
}

But it didn't work out very well.

I have also tried with applied but which() isn't a function so it did not work either.

apply(prop,2,which(prop[,1]>80))

Thank you

share|improve this question

1 Answer 1

up vote 0 down vote accepted

Is this what you're looking for ?

esp/rowSums(esp)

         X02 X03 X04   X05 X06 X07 X08S X09       X10 X11 X12P      X12V
600005 0.000   0   0 0.000   0   0    0   0 0.3333333   0    0 0.0000000
600008 0.000   0   0 0.000   0   0    0   0 0.0000000   0    0 0.6153846
600012   NaN NaN NaN   NaN NaN NaN  NaN NaN       NaN NaN  NaN       NaN
600030 0.375   0   0 0.625   0   0    0   0 0.0000000   0    0 0.0000000
600033   NaN NaN NaN   NaN NaN NaN  NaN NaN       NaN NaN  NaN       NaN
600035 0.000   0   0 1.000   0   0    0   0 0.0000000   0    0 0.0000000
       X13B X13C X13G X14 X15P      X15S X16      X17C
600005    0    0    0   0    0 0.6666667   0 0.0000000
600008    0    0    0   0    0 0.0000000   0 0.3846154
600012  NaN  NaN  NaN NaN  NaN       NaN NaN       NaN
600030    0    0    0   0    0 0.0000000   0 0.0000000
600033  NaN  NaN  NaN NaN  NaN       NaN NaN       NaN
600035    0    0    0   0    0 0.0000000   0 0.0000000

The NaN (Not A Number) elements in the result are obviously due to the fact that some plots have a total number of species of 0, thus leading to a division by zero. You can replace these values with something else if you wish, this way for example :

res <- esp/rowSums(esp)
res <- sapply(res, function(v) {
  v[is.nan(v)] <- 0
  return(v)
})
round(res,2)

       X02 X03 X04  X05 X06 X07 X08S X09  X10 X11 X12P X12V X13B X13C X13G
[1,] 0.00   0   0 0.00   0   0    0   0 0.33   0    0 0.00    0    0    0
[2,] 0.00   0   0 0.00   0   0    0   0 0.00   0    0 0.62    0    0    0
[3,] 0.00   0   0 0.00   0   0    0   0 0.00   0    0 0.00    0    0    0
[4,] 0.38   0   0 0.62   0   0    0   0 0.00   0    0 0.00    0    0    0
[5,] 0.00   0   0 0.00   0   0    0   0 0.00   0    0 0.00    0    0    0
[6,] 0.00   0   0 1.00   0   0    0   0 0.00   0    0 0.00    0    0    0
     X14 X15P X15S X16 X17C
[1,]   0    0 0.67   0 0.00
[2,]   0    0 0.00   0 0.38
[3,]   0    0 0.00   0 0.00
[4,]   0    0 0.00   0 0.00
[5,]   0    0 0.00   0 0.00
[6,]   0    0 0.00   0 0.00
share|improve this answer
    
It's exactly what I was looking for. It was a lot easier that what I thought. Thank you again Juba –  Tom Feb 14 '13 at 8:42
    
I'm coming back just for a silly question: Now that I have my data frame with the proportion of each species at each plot, I ant to select all the "pure" plots that have more than 80% of one species. –  Tom Feb 14 '13 at 10:18
    
@user2068053 Maybe you should ask it in another question. –  juba Feb 14 '13 at 10:20
    
I have actually edited my previous question. Is that the good way? –  Tom Feb 14 '13 at 10:29
    
You can use something like apply(prop, 1, function(v) any(v > 0.65)) –  juba Feb 14 '13 at 10:34

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