# Plyr for jack-knife data subsetting

I am trying to run a jack-knife using Plyr. I have a large dataset (715 sites over 10 years). I have already calculated the Species Richness (count of all species present) in a square for each year but now I want to calculate new Richness values, after taking out one species at a time and have them all in one dataset.

Example data:

``````Site <- c(1,1,1,1,1,1)
Year <- c(96,96,96,97,97,97)
SpID <- c(1,2,3,1,2,3)
Count <- c(1,1,1,1,1,1)
data <- cbind(Site, Year, SpID)
``````

So overall for Site 1 the species richness is 3 in both years. If I want recalculate this without one of the species it would now be 2.

I have tried using the following code:

``````foo<-function(z){
data2 <- subset(data, SpID != (z))
summaryBy(Count~ Year + Site,
data = data2,
FUN = function(x) { c(l = length(x)) } )
}
``````

`richall<- ddply(data,.(SpID),foo)`

But I'm obviously making a mistake somewhere! Any thoughts?

-

With your example data and call to `ddply`, this is what will happen:

• `ddply` will find the different values in the SpID column of your dataset (1, 2 and 3)
• It will next create a `data.frame` for each of these unique values.
• Each of these `data.frame`s will hold only the rows for which the SpID is equal to that unique value (so: a `data.frame` with the first and fourth rows, one with the second and fifth and one with the third and last rows)
• Function foo will now be called, passing each of these `data.frame`s one at a time as its first argument

So it is rather obvious now that this will not help in doing jack-knife. In fact I don't see an obvious way of attaining that with `plyr`. In this particular case you're probably better off rigging your own with similar logic. Something like:

``````listOfResults <-
lapply(unique(data\$SpID),
function(curID) {
curDF<-data[data^SpID!=curID,]
summaryBy(...,data=curDF)
})
``````

You can then recombine your results with e.g. `?do.call`.

-
Thanks @NicKSabbe this is excellent... here ends two days of frustration! –  CDavey Nov 17 '11 at 14:54