I want to calculate the correlation between two datasets with a condition from another data.I want the top 50% of P, this corresponds to the values of P greater than the median.

```
P=c(1,6,5,6,2,8,5)
sf=c(1,2,6,6,4,5,5)
Pf=c(1,6,5,8,4,8,5)
```

normal corr:

```
cor(sf,Pf)
```

with condition:

```
cor(sf[P > median(P)], Pf[P > median(P)])
```

this worked perfectly.How Can I apply the same thing with my real data?

```
dir1 <- list.files("jkior", "*.bin", full.names = TRUE)
dir2 <- list.files("hjuor2", "*.bin", full.names = TRUE)
dir3 <- list.files("ghor2", "*.bin", full.names = TRUE)
file_tot<-array(dim=c(360,720,365,3))
for(i in 1:length(dir1)){
file_tot[,,i,1] <- readBin(dir1[i], integer(), size = 2 ,n = 360 * 720 , signed = T)
file_tot[,,i,2] <- readBin(dir2[i], integer(), size = 2 ,n = 360 * 720 , signed = T)
file_tot[,,i,3] <- readBin(dir3[i], integer(), size = 2 ,n = 360 * 720 , signed = T)
}
```

normal correlation :

```
results<-apply(file_tot,c(1,2),function(x){cor(x[,1],x[,2])})
```

with condition(using dir3(p is dir3 here)):

```
???
```

Thanks in advance