My data frame (g) contains 2 columns with continues data and other columns with categorical data. I want to test for correlations between the 2 continues variables, in different groups which are defined by a third column.

g (157X3000) look like:

```
Geno GDW GN M1 M2 M3
1 SB002XSB012 -17.1597630 52.31961 G/G C/C T/T
3 SB002XSB044 -3.6537657 53.81305 G/G C/G G/G
4 SB002XSB051 -7.8411596 58.05924 A/G C/C G/T
5 SB002XSB067 2.8412103 30.85074 A/G G/G G/T
6 SB002XSB073 -16.0789550 -10.09913 A/A C/G G/G
7 SB002XSB095 0.1759709 10.28837 A/A G/G T/T
```

I'm looking for the correlations between GDW and GN in each of the groups as defined by each M. I tried :

```
q<- function (x) {
spl<-split(g[,2:3],x)
r<-function(x) { if ((nrow(x[[1]][1]))>2)
cor.test(x[[1]][1],x[[1]][2],use="pairwise.complete.obs")[3:4] else Na
}
cor<- sapply(spl,r)
}
all.cor<- apply(g[,4:ncol(g)],2,q)
```

and got:

```
Error in if ((nrow(x[[1]][1])) > 2) cor.test(x[[1]][1], x[[1]][2], use = "pairwise.complete.obs")[3:4] else Na :
argument is of length zero
```

and did'n solved it

Any ideas