I am trying to apply a function I wrote that uses the 'pls' package to make a model and then use it to predict several test set(in this case 9), returning the R2,RMSEP and prediction bias of each test set for n number of subset selected from the data frame. the function is

```
cpo<-function(data,newdata1,newdata2,newdata3,newdata4,newdata5,newdata6,newdata7,newdata8,newdata9){
data.pls<-plsr(protein~.,8,data=data,validation="LOO")#making a pls model
newdata1.pred<-predict(data.pls,8,newdata=newdata1) #using the model to predict test sets
newdata2.pred<-predict(data.pls,8,newdata=newdata2)
newdata3.pred<-predict(data.pls,8,newdata=newdata3)
newdata4.pred<-predict(data.pls,8,newdata=newdata4)
newdata5.pred<-predict(data.pls,8,newdata=newdata5)
newdata6.pred<-predict(data.pls,8,newdata=newdata6)
newdata7.pred<-predict(data.pls,8,newdata=newdata7)
newdata8.pred<-predict(data.pls,8,newdata=newdata8)
newdata9.pred<-predict(data.pls,8,newdata=newdata9)
pred.bias1<-mean(newdata1.pred-newdata1[742]) #calculating the prediction bias
pred.bias2<-mean(newdata2.pred-newdata2[742])
pred.bias3<-mean(newdata3.pred-newdata3[742]) #[742] reference values in column742
pred.bias4<-mean(newdata4.pred-newdata4[742])
pred.bias5<-mean(newdata5.pred-newdata5[742])
pred.bias6<-mean(newdata6.pred-newdata6[742])
pred.bias7<-mean(newdata7.pred-newdata7[742])
pred.bias8<-mean(newdata8.pred-newdata8[742])
pred.bias9<-mean(newdata9.pred-newdata9[742])
r<-c(R2(data.pls,"train"),RMSEP(data.pls,"train"),pred.bias1,
pred.bias2,pred.bias3,pred.bias4,pred.bias5,pred.bias6,
pred.bias7,pred.bias8,pred.bias9)
return(r)
}
```

selecting n number of subsets (based on an answer from my question[1]: Select several subsets by taking different row interval and appy function to all subsets and applying cpo function to each subset I tried

Edited based on @Gavin advice

```
FO03 <- function(data, nSubsets, nSkip){
outList <- vector("list", 11)
names(outList) <- c("R2train","RMSEPtrain", paste("bias", 1:9, sep = ""))
sub <- vector("list", length = nSubsets) # sub is the n number subsets created by selecting rows
names(sub) <- c( paste("sub", 1:nSubsets, sep = ""))
totRow <- nrow(data)
for (i in seq_len(nSubsets)) {
rowsToGrab <- seq(i, totRow, nSkip)
sub[[i]] <- data[rowsToGrab ,]
}
for(i in sub) { #for every subset in sub i want to apply cpo
outList[[i]] <- cpo(data=sub,newdata1=gag11p,newdata2=gag12p,newdata3=gag13p,
newdata4=gag21p,newdata5=gag22p,newdata6=gag23p,
newdata7=gag31p,newdata8=gag32p,newdata9=gag33p) #new data are test sets loaded in the workspace
}
return(outlist)
}
FOO3(GAGp,10,10)
```

when I try this I keep getting 'Error in eval(expr, envir, enclos) : object 'protein' not found' not found. Protein is used in the plsr formula of cpo, and is in the data set. I then tried to use the plsr function directly as seen below

```
FOO4 <- function(data, nSubsets, nSkip){
outList <- vector("list", 11)
names(outList) <- c("R2train","RMSEPtrain", paste("bias", 1:9, sep = ""))
sub <- vector("list", length = nSubsets)
names(sub) <- c( paste("sub", 1:nSubsets, sep = ""))
totRow <- nrow(data)
for (i in seq_len(nSubsets)) {
rowsToGrab <- seq(i, totRow, nSkip)
sub[[i]] <- data[rowsToGrab ,]
}
cal<-vector("list", length=nSubsets) #for each subset in sub make a pls model for protein
names(cal)<-c(paste("cal",1:nSubsets, sep=""))
for(i in sub) {
cal[[i]] <- plsr(protein~.,8,data=sub,validation="LOO")
}
return(outlist) # return is just used to end script and check if error still occurs
}
FOO4(gagpm,10,10)
```

When I tried this I get the same error 'Error in eval(expr, envir, enclos) : object 'protein' not found'. Any advice on how to deal with this and make the function work will be much appreciated.