I have a data set with multiple species, and about 400 variables. I would like to perform a Princpal Component Analysis (PCA) on each individual species, and return the variable with the highest loading value per species.
To make a replicate dummy set of my data:
set.seed(45) pcadata <- data.frame(matrix(sample(10, 26746*400, TRUE), ncol=400)) cbind(pcadata,"Species")
One problem I have encountered is having different sample sizes for a given Species. So for example, I might have 250 samples of Species A, and 520 of Species B. I therefore have to use the
prcomp function, because I have more variables than samples. Therefore, if Species A (spA) were in the data.frame, I would first have to subset the data:
pcadata.s<-pcadata[,2:401] pca<-prcomp(pcadata.s,cor=T,scale=T) al<-abs(pca$rotation) #Absolute value of the loading value loads<-sweep(al,2,colSums(al),"/") #Percentage contribution loads.mtx<-as.data.frame(loads) rownames(loads.mtx)[apply(loads.mtx,2,which.max)] #Return the Column-name with the max value
I would like, without having to sub-sample each time, get the Column names per each Species groupings, for example:
Species PC1 PC2 PC3 PC4 PC5 spA V3 V100 V287 V2 V65 spB V78 V197 V310 V23 V333 ........
Just realized: I need to select the components I am interested in, preferably 95% of explained variance, and maybe I will try for 99% also...but I will have to include the code for that.
Any suggestions will be appreciated.