Preceding information that you might help understand the problem: I have a data/set and or matrix that has 257 columns, with column 257 just a column of zeros for coding purposes.

I need to find what the highest correlation between four - ten indivisual columns using an indivisual linear model for every possible combination. I have been ranking the best fit by the R squared value for each linear model as comparing it to a single column matrix.

I have already completed this task for every combination of 1-3 columns, but when four parameters are used as shown below, R cannot complete the task in a reasonable amount of time, have had the code running for about five days, and its not even close to being done.

The code below is a loop within a loop within a loop... etc, adding another loop for each added parameter used. Currently the code will save the r squared value and the loop number of each loop in a vector if it is within the top ten highest found. I thought doing this would save some memory, and speed it up, however, it did not help at all or not enough.

My question is: Is it possible to speed this up in R, or is there a better language to use? And how would I go about using another language, software? Price? I have only used R in coding before, as I havent done it for long and am an amatuer by a long shot.

I would appreciate any advice! Thanks.

The code is as follows for the example with four parameters, that has taken very long to run

```
#Creating objects for loop run. Overunder is already filled.
overundermatrix <- matrix(0,nrow=length(totalsc),ncol=1)
vectfourparamovun <- c(.01,.001,.0001,.00001,.000001,.0000001,.00000001,.000000001,.0000000001,.00000000001)
vectfourindexovun <- vector("list",10)
#Main Body of Loop
options(warn=-1)
for(n in 3:256){
for(i in 1:254){
for(j in 1:254){
for(a in 1:254){
lm1 <- lm(overundermatrix~data[,n]+data[,(ifelse((n+i)>256,257,(n+i)))]+data[,(ifelse((n+i+j)>256,257,(n+i+j)))]+data[,ifelse((n+i+j+a)>256,257,(n+i+j+a))])
lm1sum <-summary(lm1)
if(lm1sum[[9]]>vectfourparamovun[1:10])
{
vectfourindexovun[[which.min(vectfourparamovun[1:10])]] <- list(c(a,j,i,n))
vectfourparamovun[which.min(vectfourparamovun[1:10])] <- lm1sum[[9]]
}
}
}
}
}
options(warn=0)
```

As you can see, I just want to find every possible combination and create a linear model for it, but it is very long to do. I don't know how to without using loops.