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r - How to minimize size of object of class "lm" without compromising it being passed to predict()

I want to run lm() on a large dataset with 50M+ observations with 2 predictors. The analysis is run on a remote server with only 10GB for storing the data. I have tested ′lm()′ on 10K observations sampled from the data and the resulting object had size 2GB+.

I need the object of class "lm" returned from lm() ONLY to produce the summary statistics of the model (summary(lm_object)) and to make predictions (predict(lm_object)).

I have done some experiment with the options model, x, y, qr of lm. If I set them all to FALSE I reduce the size by 38%

library(MASS)
fit1=lm(medv~lstat,data=Boston)
size1 <- object.size(fit1)
print(size1, units = "Kb")
# 127.4 Kb bytes
fit2=lm(medv~lstat,data=Boston,model=F,x=F,y=F,qr=F)
size2 <- object.size(fit2)
print(size2, units = "Kb")
# 78.5 Kb Kb bytes
- ((as.integer(size1) - as.integer(size2)) / as.integer(size1)) * 100
# -38.37994

but

summary(fit2)
# Error in qr.lm(object) : lm object does not have a proper 'qr' component.
#  Rank zero or should not have used lm(.., qr=FALSE).
predict(fit2,data=Boston)
# Error in qr.lm(object) : lm object does not have a proper 'qr' component.
#  Rank zero or should not have used lm(.., qr=FALSE).

Apparently I need to keep qr=TRUE which reduce the object size by only 9% if compared with the default object

fit3=lm(medv~lstat,data=Boston,model=F,x=F,y=F,qr=T)
size3 <- object.size(fit3)
print(size3, units = "Kb")
# 115.8 Kb
- ((as.integer(size1) - as.integer(size3)) / as.integer(size1)) * 100
# -9.142752

How do I bring the size of the "lm" object to a minimum without dumping a lot of unneeded information in memory and storage?

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1 Answer

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The link here provides a relevant answer (for glm object, which is very similar to lm output object).

http://www.win-vector.com/blog/2014/05/trimming-the-fat-from-glm-models-in-r/

Basically, predict only use the coefficient part which is very small portion of the glm output. the function below (copied from the link) trim information that will not be used by predict.

It does have a caveat though. After trimming, it can't be used by summary(fit) or other summary functions since those functions need more that what predict requires.

cleanModel1 = function(cm) {
  # just in case we forgot to set
  # y=FALSE and model=FALSE
  cm$y = c()
  cm$model = c()

  cm$residuals = c()
  cm$fitted.values = c()
  cm$effects = c()
  cm$qr$qr = c()
  cm$linear.predictors = c()
  cm$weights = c()
  cm$prior.weights = c()
  cm$data = c()
  cm
}

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