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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
share|improve this question
7  
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
5  
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
3  
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
2  
Google "r profiler". –  joran Apr 10 '13 at 3:17
3  
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

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