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I am using RStudio 0.97.320 (R 2.15.3) on amazon ec2. My df has 200k rows and 12 columns.

I am trying to fit a logistic regression with ~1500 parameters.

Rsudio is using 7% cpu and has 60+GB memory and is still taking a very long time.

Here is the code:

glm.1.2<-glm(formula = Y ~ factor(X1) * log(X2) * (X3 + X4 * (X5 + I(X5^2)) * (X8 + I(X8^2)) + ((X6 + I(X6^2)) * factor(X7))), family = binomial(logit), data = df[1:150000,])

Any suggestions to speed this up by a significant amount?

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3  
I don't have an immediate suggestion on speed but as far as inference goes you should not be using var+I(var^2). Instead you should use poly(var,2). You have constructed an incredibly complex formula and it is not at all clear that you need such a monster. You should describe the research question and get further advice about analysis design, and you should probably do so over at CrossValidated. –  BondedDust Apr 29 '13 at 17:40
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I doubt that fitting 1500 parameters will give a useful result. –  Roland Apr 29 '13 at 17:40
1  
Interesting technical question, although I agree with the other commenters' concerns. (1) There is a fastLm function in the RcppArmadillo package that illustrates how to speed up linear regression gallery.rcpp.org/articles/fast-linear-model-with-armadillo , but re-implementing GLM would be more work. (2) Installing an optimized BLAS library might be lower-hanging fruit: r-bloggers.com/faster-r-through-better-blas . (3) Linear regression might work OK, although N/P is only 133 in this case. (4) Try penalized GLM via the glmnet package ... –  Ben Bolker Apr 29 '13 at 17:43
    
(5) since some of your predictors are factors, you might buy some speed by using a sparse model matrix (see ?glm.fit and ?sparse.model.matrix in the Matrix package) -- especially if your factors have many levels. –  Ben Bolker Apr 29 '13 at 17:56
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You should seriously consider using glmnet it's really fast (it uses gradient descent) and with 1500 parameters to fit I don't think that regularization (through elasticnet) would hurt.... –  dickoa Apr 29 '13 at 20:09

2 Answers 2

up vote 3 down vote accepted

You could try the speedglm function from the speedglm package. I haven't used it on problems as large as you describe, but especially if you install a BLAS library (as @Ben Bolker suggested in the comments) it should be easy to use and give you a nice speed bump.

I remember seeing a table benchmarking glm and speedglm with and without a BLAS library, but I can't seem to find it today. I remember that the convinced me that I want both BLAS and speedglm.

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can I use speedglm on stepwise? –  user1024441 May 12 at 7:03

Although a bit late but I can only encourage dickoa's suggestion to generate a sparse model matrix using the Matrix package and then feeding this to the speedglm.wfit function. That works great ;-) This way, I was able to run a logistic regression on a 1e6 x 3500 model matrix in less than 3 minutes.

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