Using the apply function and selecting rows

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

``````         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.

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

-

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
``````
-
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