I have 9 data sets, each having 115 rows and 742 columns and each data set contains results from a spectrometer taken under specific conditions.

I would like to analyze all combinations of these 9 data sets to determine the best conditions.

Edit:

The data are spectral measurements(rows= samples,columns =wavelengths) taken at 10 different temperatures.

I would like to get all combinations of the 9 data sets and apply a function `cpr2`

to each combination. `cpr2`

takes a data set and makes a plsr model,predicts 9 test sets(the individual sets),and returns bias of prediction.

My intention is to find which combination gave the smallest prediction biases i.e how many temperature conditions are need to give acceptable bias.

Based on suggestion:

I'm looking to do something like this

```
g<-c("g11","g12","g13,g21","g22","g23","g31","g32","g33")
cbn<-combn(g,3) # making combinations of 3
```

`comb<-lapply(cbn,cpr2(cbn))`

for reference cpr2 is

```
cpr2<-function(data){
data.pls<-plsr(protein~.,8,data=data,validation="LOO") #make plsr model
gag11p.pred<-predict(data.pls,8,newdata=gag11p) #predict each test set
gag12p.pred<-predict(data.pls,8,newdata=gag12p)
gag13p.pred<-predict(data.pls,8,newdata=gag13p)
gag21p.pred<-predict(data.pls,8,newdata=gag21p)
gag22p.pred<-predict(data.pls,8,newdata=gag22p)
gag23p.pred<-predict(data.pls,8,newdata=gag23p)
gag31p.pred<-predict(data.pls,8,newdata=gag31p)
gag32p.pred<-predict(data.pls,8,newdata=gag32p)
gag33p.pred<-predict(data.pls,8,newdata=gag33p)
pred.bias1<-mean(gag11p.pred-gag11p[742]) #calculate prediction bias
pred.bias2<-mean(gag12p.pred-gag12p[742])
pred.bias3<-mean(gag13p.pred-gag13p[742])
pred.bias4<-mean(gag21p.pred-gag21p[742])
pred.bias5<-mean(gag22p.pred-gag22p[742])
pred.bias6<-mean(gag23p.pred-gag23p[742])
pred.bias7<-mean(gag31p.pred-gag31p[742])
pred.bias8<-mean(gag32p.pred-gag32p[742])
pred.bias9<-mean(gag33p.pred-gag33p[742])
r<-signif(c(pred.bias1,pred.bias2,pred.bias3,pred.bias4,pred.bias5,
pred.bias6,pred.bias7,pred.bias8,pred.bias9),2)
out<-c(R2(data.pls,"train",ncomp=8),RMSEP(data.pls,"train",ncomp=8),r)
return(out)
}
```

Any insights into solving this will be appreciated.

allcombinations of them, I hope you are prepared for long wait! – Gavin Simpson Sep 12 '11 at 8:56`rbind()`

to combine them into one data frame:`g <- rbind(g11,g12,g13,g21,g22,g23,g31,g32,g33,g2)`

– adamleerich Sep 12 '11 at 8:56`g11`

and`g12`

, what does this combined matrix look like? A single matrix with 230 rows? – Andrie Sep 12 '11 at 8:57`rbind()`

would give me a single data set,`however i want to assess how individual conditions interact, eg. g11,g31 and g33 or g11, g21,g22 and g33`

. I have been doing the selections manually but I am hoping there is an easier way. – DinoSingh Sep 12 '11 at 10:33