I am running the following for loop for the gwr.basic function in the GWmodel package in R. What I need to do is to collect the mean of estimate parameter for any given bandwidth.
the code looks like:
library(GWmodel)
data("DubVoter")
#Dub.voter
LARentMean = list()
for (i in 20:21)
{
gwr.res <- gwr.basic(GenEl2004 ~ DiffAdd + LARent + SC1 + Unempl + LowEduc + Age18_24 + Age25_44 + Age45_64, data = Dub.voter, bw = i, kernel = "bisquare", adaptive = TRUE, F123.test = TRUE)
a <- mean(gwr.res$SDF$LARent)
LARentMean[i] <- a
}
outcome = unlist(LARentMean)
> outcome
[1] -0.1117668 -0.1099969
However it is terribly slow at returning the result. I need a much wider range such as 20:200. Is there a way to speed the process up? If not, how to have a stepped range let's say 20 to 200 with steps of 5 to reduce the number of operations?
I am a python user new to R. I read on SO that R is well known for being slow at for loops and that there are more efficient alternatives. More clarity on this point would be welcomed.
for
loop is very expensive, not thefor
loop itself. In that casefor
loop alternatives (*apply
ordplyr
) may not help much. Or are you looking for solutions which parallelize the code?microbenchmark
of one iteration (bw=20
) on my MacBook Pro says it takes ~9s for it to run. I don't know if changing thebw
value will cause the model to be slower. 2 cores might help if you had more iterations since memory is probably not a factor asDubVoter
is just 1MB (it will get copied for each parallel task), but for that few it may only get you a 25-33% speedup (it could be more, I know not of your architecture). You can doseq(20,200,5)
to go by 5's and I'd suggest installing thebeep
pkg to notify you audibly when the task is done.