I'm relatively new to R and would be incredibly appreciative of any help.

I have survey data (items are called j01:j10) grouped into geographic areas (VISN), and there are stations (StaNo) within each area. The goal is to compare each station to the mean of the VISN excluding the particular station, and to do that for each item. Here is a small example set:

```
> visn<-c(1,1,1,2,2,2)
> station<-c(101, 102, 103, 201, 202, 203)
> j01<-c(2,3,4,2,3,4)
> j02<-c(3,2,5,4,2,3)
> data<-cbind(visn, station, j01, j02)
```

I have 2 functions already written (cliffs.d and sig), and I need subsetted data to pass to them. I have these subsets hard-coded (11,000+ lines of code) and I don't know how to use indexing or looping to condense.

Here is an example of what I have, for 1 comparison (station 101 compared to VISN 1 excluding station 101, for item j01):

```
>visn<-subset(data, VISN==1 & StaNo!="101", select=j01)
>station<-subset(data, StaNo=="101", select=j01)>
>a<-c(cliffs.d(station, visn))
>p<-c(sig(station, visn))
```

This is what I need (I only know how to express this in non-vectorized language):

```
for each item in c(j01:j10)
for each station in station
visn<-subset(data, visn==visn[i] & station!=stano[i], select=item[i]
station<-subset(data, station==station[i], select=item[i]
a<-c(a, cliffs.d(station, visn))
p<-c(p, sig(station, visn))
```

I've spent days on this and I'll be incredibly thankful for any help or pushes in the right direction.

`data <- as.data.frame(data); for (itemname in tail(colnames(data),-2)) { for (station in unique(data$station)) { print(sprintf("%s // %s",itemname,station)) }}`

– texb Jul 22 '13 at 16:35