# linear model in for loop; using apply function?

Is there any way to make the following algorithm faster, such as using an apply function?

``````    set.seed(1)
n=1000

y=rnorm(n)
x1=rnorm(n)
x2=rnorm(n)

lm.ft=function(y,x1,x2)
return(lm(y~x1+x2)\$coef)

res=list();
for(i in 1:n){
x1.bar=x1-x1[i]
x2.bar=x2-x2[i]
res[[i]]=lm.ft(y,x1.bar,x2.bar)
}
``````
-

Use `lm.fit` instead of `lm`:

``````fun1 <- function() {
res=list();
for(i in 1:n){
x1.bar=x1-x1[i]
x2.bar=x2-x2[i]
res[[i]]=lm.ft(y,x1.bar,x2.bar)
}
res
}

lm.ft2 <- function(y,x1,x2) lm.fit(cbind(1,x1,x2), y)\$coef

fun2 <- function() {
res2 <- sapply(seq_along(y), function(i, x1, x2, y) {
x1.bar=x1-x1[i]
x2.bar=x2-x2[i]
lm.ft2(y,x1.bar,x2.bar)
}, x1=x1, x2=x2, y=y)
res2
}

library(microbenchmark)
microbenchmark(res <- fun1(), res2 <- fun2(), times=10)

#Unit: milliseconds
#         expr        min         lq    median        uq       max neval
#res <- fun1() 147.776069 149.580443 152.64378 159.53053 166.06834    10
#res <- fun2()   8.760102   9.004934  10.34582  10.58757  13.86649    10

all.equal(
unname(t(res2)),
unname(do.call(rbind,res))
)
#[1] TRUE
``````
-
It seems most of the speed improvement is from using lm.fit. Is there any other way to reduce the speed from the FOR loop? In fact, I need to use double for loops. –  user1690124 Dec 19 '13 at 16:37
I doubt that you need a double `for` loop. However, `for` loops are actually pretty fast in R (and `lapply` and friends are not faster). What you do inside the loop usually is the time consuming part. The best speed-up you can achieve by using vectorized functions. –  Roland Dec 19 '13 at 19:25