I am trying to vectorize my nested for loop code using `apply`

/`mapply`

/`lapply`

/`sapply`

or any other way to reduce the running time. My code is as follows:

```
for (i in 1:dim){
for (j in i:dim){
if(mydist.fake[i,j] != d.hat.fake[i,j]){
if((mydist.fake[i,j]/d.hat.fake[i,j] > 1.5)|(d.hat.fake[i,j]/mydist.fake[i,j]>1.5)){
data1 = cbind(rowNames[i],rowNames[j], mydist.fake[i,j], d.hat.fake[i,j], 1)
colnames(data1) = NULL
row.names(data1) = NULL
data = rbind(data, data1)
}else{
data1 = cbind(rowNames[i],rowNames[j], mydist.fake[i,j], d.hat.fake[i,j], 0)
colnames(data1) = NULL
row.names(data1) = NULL
data = rbind(data, data1)
}
}
}
}
write.table(data, file = "fakeTest.txt", sep ="\t", col.names = FALSE, row.names = FALSE)
```

- rowNames is the vector of rownames of all data points
`data`

is a dataframe`mydist.fake`

and`d.hat.fake`

are distance matrices (where the diagonal is zero and values of upper and lower triangle is same) and therefore, interested in the transversal of lower triangle (leaving values of diagonals too).- The dimensions of the both the matrices are the same.

The major problem I am facing is the vectorization of the `j`

loop where `j`

is initialized as `i`

.

`rowNames`

in your example?. – mnel Mar 15 '13 at 3:40