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I compared the performance of the inbuilt R functions rnorm, qnorm and pnorm to the equivalent Matlab functions.

It seems as if the rnorm and pnorm functions are 3-6 times slower in R than in Matlab, whereas the qnorm function is ca. 40% faster in R. I tried the Rcpp package to speed up the R functions by using the corresponding C libraries which resulted in a decrease in runtime by ~30% which is still significantly slower than Matlab for rnorm and pnorm.

Is there a package availabe which provides a faster way of simulating normally distributed random variables in R (other than using the standard rnorm function)?

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you've probably figured this out already, but the other thing to note is that picking big block of random numbers is much faster in R than picking them one-by-one ... i.e. rnorm(1e6) is much faster than vapply(seq(1e6),function(i) rnorm(1),numeric(1)) –  Ben Bolker Feb 14 '13 at 15:23
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up vote 3 down vote accepted

To promote my comment to an answer: yes, there is.

library("sos"); findFn("Ziggurat") finds the rziggurat function in the SuppDists package; it is implemented in C (or C++?), and its documentation says

This implementation running in R is approximately three times as fast as rnorm().

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Thanks Ben for this hint! It actually improves the runtime by a factor of 6 on my machine. Maybe there is another package which also improves the runtime for the pnorm function? –  user1372987 Feb 15 '13 at 8:57
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I see two distinct issues here, one in each paragraph:

  • Yes, there are difference between languages / systems such as R and Matlab. Part of it has to do with the interpreter, speed of loops, speed of function calls etc pp. Rcpp can help there with respect to Matlab which has a genuine JIT compiler. We have a comparison between Matlab, R and R+Rcpp for a Kalman filter in the recent paper on RcppArmadillo.

  • There also are difference in the underlying compiled code, and yes, R does not always have the faster implementation as R Core (IMHO rightly) goes for precision first. (And Rcpp does not help per se: We just call what R has internally.) This had come up eg with the Gibbs Sampler example for MCMC which Darren Wilkinson started. I noticed that R's rgamma() is much slower than other systems. So to get to your question regarding N(0,1) draws in a faster way: I think we need a contributed Ziggurat implementation. That is one of the faster N(0,1) generators out there, and a few other systems use it.

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Indeed: library("sos"); findFn("Ziggurat") finds finzi.psych.upenn.edu/R/library/SuppDists/html/ziggurat.html , which says " This implementation running in R is approximately three times as fast as rnorm(). " –  Ben Bolker Feb 14 '13 at 15:03
Thanks, Ben. I think I once I knew that but filed it under "good, and now I need it from C++..." and forgot. –  Dirk Eddelbuettel Feb 14 '13 at 15:04
you could probably just steal the code -- it's GPL ... –  Ben Bolker Feb 14 '13 at 15:06
Yep -- Ziggurat goes back to a JSS paper and free implementation. Matter of available time and other projects... –  Dirk Eddelbuettel Feb 14 '13 at 15:25
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