# How to avoid using loops in this algorithm?

I try to avoid the loops in R, but it seems that I have to use it some times:

``````X=rnorm(100)
Y=matrix(rnorm(200*100),ncol=100)
Beta=function(y,period){  # y is a vector, maybe one row of Y
num.col=length(y)-period+1
ret=matrix(NA,1,num.col)  # store the result
for(i in period:(length(y))){
lm.sol=lm(y[(i-period+1):i]~X[(i-period+1):i])
ret[i-period+1]=lm.sol\$coefficients[2]
}
return(ret)
}
beta.30=apply(Y,1,Beta,period=30)
beta.30=t(beta.30)
``````

I try to avoid the loops by using `apply`, but there is still a `for` loop in function `Beta`, and the calculation speed is not fast enough, is there any methods to avoid the `for` loop in this algorithm? Or any methods to speed up the algorithm?

Thanks!

One way I can think about is to compile the `Beta` function by:

``````require(compiler)
enableJIT(3)
``````

but still not fast enough, I think I need to modify the algorithm itself.

`lm.fit` is helpful! It greatly improve the speed.

``````Beta1=function(y,period){
num.col=length(y)-period+1
ret=matrix(NA,1,num.col)
for(i in period:(length(y))){
A=matrix(c(rep(1,period),X[(i-period+1):i]),ncol=2)
lm.sol=lm.fit(A,y[(i-period+1):i])
ret[i-period+1]=lm.sol\$coefficients[2]
}
return(ret)
}
system.time(apply(Y,1,Beta,period=30))
user system elapsed
19.08 0.00 19.08
system.time(apply(Y,1,Beta1,period=30))
user system elapsed
1.09 0.00 1.09
``````
-
`I try to avoid the loops by using apply`. NO! apply is just a loop with no side effect! and for is not slow in R! This is a myth! –  agstudy Apr 10 '13 at 2:22
Loops in R are not slow. Have you even bothered to profile your code to see where the bottleneck is? An obvious speed up would be to use `lm.fit` instead of the convenience sugar of the formula interface given by `lm`. –  Gavin Simpson Apr 10 '13 at 2:31
Indeed: using a profiler indicates that 99.4% of the function's time is spent within the `lm` function. –  David Robinson Apr 10 '13 at 2:55
Google "r profiler". –  joran Apr 10 '13 at 3:17
To clarify, usually people say loops are slow in R because they're MUCH MUCH slower than vector operations. This is true whether it's `for`, or `apply`. So, they are slow, there's just not much to speak of between `for` and `apply` family functions. And, if you need a loop, as you can see here, it's not always the source of a performance bottleneck. –  John Apr 10 '13 at 3:49