1

I need to speed up a calculation that produces a symmetric matrix. Currently I have something like this:

X <- 1:50
Y<- 1:50
M <- outer(X, Y, FUN = myfun)

where myfun is a quite complicated, vectorized, but symmetrical function (myfun(x, y) = myfun(y, x)).

So my code unnecessarily wastes time calculating the lower triangular matrix as well as the upper triangular matrix.

How can I avoid that duplication without using slow for-loops?

10
  • This is not related directly to your question but I trust it will help - the R open distribution from Microsoft uses multi-threaded math libraries - Intel MKL which gives a significant boost to matrix operations (over 100x speed up is some situations) compared to single threaded BLAS/LAPACK libraries. I found it is well worth the effort to install it.
    – missuse
    Sep 18, 2018 at 10:24
  • 1
    How can M be a symmetric matrix when it is not square?
    – James
    Sep 18, 2018 at 10:27
  • 1
    One way would be to use memoisation and use a wrapper to ensure that when myfun(y,x) is called it looks for myfun(x,y). This might be useful: github.com/r-lib/memoise
    – James
    Sep 18, 2018 at 10:38
  • @989 Not necessarily; I just used integers to illustrate the question.
    – JeremyC
    Sep 18, 2018 at 11:00
  • @989 The function is of the form Vectorize(fn(x, y)). fn takes two scalars and returns a scalar.
    – JeremyC
    Sep 18, 2018 at 12:44

1 Answer 1

2

If your function is slow and timing scales with size of its input, you could use combn:

X <- 1:50
Y <- 1:50

#a slow function
myfun <- function(x, y) {
  res <- x * NA
  for (i in seq_along(x)) {
    Sys.sleep(0.01)
    res[i] <- x[i] * y[i]
    }
  res
}

system.time(M <- outer(X, Y, FUN = myfun))
#user  system elapsed 
#0.00    0.00   26.41 

system.time({
  inds <- combn(seq_len(length(X)), 2)
  M1 <- matrix(ncol = length(X), nrow = length(Y))

  M1[lower.tri(M1)] <-  myfun(X[inds[1,]], Y[inds[2,]])
  M1[upper.tri(M1)] <- t(M1)[upper.tri(M1)]
  diag(M1) <- myfun(X, Y)
})
#user  system elapsed 
#0.00    0.00   13.41

all.equal(M, M1)
#[1] TRUE

However, the best solution is probably to implement this in C++ via Rcpp.

3
  • Many thanks. I can't write C++ but halving the time with your R code is well worthwhile.
    – JeremyC
    Sep 18, 2018 at 12:54
  • 1
    Maybe seq_along(X) in place of seq_len(length(X))?
    – 989
    Sep 18, 2018 at 13:07
  • Sure. Doesn't make a difference speed-wise here, though.
    – Roland
    Sep 18, 2018 at 13:10

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