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I am attempting to use predict with a loess object in R. There are 112406 observations. There is one particular line inside stats:::predLoess which attempts to multiply N*M1 where N=M1=112406. This causes an integer overlow and the function bombs out. The line of code that does this is the following (copied from predLoess source):

L <- .C(R_loess_ise, as.double(y), as.double(x), as.double(x.evaluate[inside, 
]), as.double(weights), as.double(span), as.integer(degree), 
as.integer(nonparametric), as.integer(order.drop.sqr), as.integer(sum.drop.sqr), 
as.double(span * cell), as.integer(D), as.integer(N), as.integer(M1), 
double(M1), L = double(N * M1))$L

Has anyone solved this or found a solution to this problem? I am using R 2.13. The name of this forum is fitting for this problem.

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If you can hack the code, can you change that piece to L = double(as.double(N)*M1) ? – Ben Bolker Oct 29 '12 at 2:42
R 2.13 is quite out of date. A quick scan of the news sections shows improvements to loess() and predict.loess in subsequent versions. Try updating to R 2.15.2 and seeing if the issue is still present – mnel Oct 29 '12 at 2:42
unfortunately i'm running R on a cluster and don't have much of a choice in this matter. i may try to copy this data set locally and plot since it's so small – Alex Oct 29 '12 at 2:43
Well, even if you can't run a new version etc. you may be able to hack the code of predLoess (dump() to a file, edit, change the name to myPredLoess to avoid confusion, and source() ... (a quick look suggests the problem is still there in R-devel) – Ben Bolker Oct 29 '12 at 3:02
I'm running r-devel, so I just glanced at the source of the file to see that the L=double(N*M1) was still there, and testing this statement with N=M=112406 still causes an overflow. – Ben Bolker Oct 29 '12 at 11:16

1 Answer 1

up vote 2 down vote accepted

It sounds like you're trying to get predictions for all N=112406 observations. First, do you really need to do this? For example, if you want graphical output, it's faster just to get predictions on a small grid over the range of your data.

If you do need 112406 predictions, you can split your data into subsets (say of size 1000 each) and get predictions on each subset independently. This avoids forming a single gigantic matrix inside predLoess.

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could you please elaborate on your first point? would you suggest forming newdata by expand.grid and running predict on that? – Alex Oct 29 '12 at 5:21
@Alex yes, something like that. I'm assuming that your model doesn't have too many dimensions, so expand.grid won't end up producing a huge output anyway. – Hong Ooi Oct 29 '12 at 7:18

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