5

I've been training randomForest models in R on 7 million rows of data (41 features). Here's an example call:

myModel <- randomForest(RESPONSE~., data=mydata, ntree=50, maxnodes=30)

I thought surely with only 50 trees and 30 terminal nodes that the memory footprint of "myModel" would be small. But it's 65 megs in a dump file. The object seems to be holding all sorts of predicted, actual, and vote data from the training process.

What if I just want the forest and that's it? I want a tiny dump file that I can load later to make predictions off of quickly. I feel like the forest by itself shouldn't be all that large...

Anyone know how to strip this sucker down to just something I can make predictions off of going forward?

  • 1
    ?randomForest advises against using the formula interface with large numbers of variables... are the results any different if you don't use the formula interface? The Value section of ?randomForest also tells you how to turn off some of the output (importance matrix, the entire forest, proximity matrix, etc.). – Joshua Ulrich Dec 3 '12 at 20:47
  • 1
    May have just answered my own question...nulling out the fields I don't want in the model seems to be sufficient. If I just do: myModel$votes <- NULL myModel$predicted <- NULL myModel$oob.times <- NULL myModel$y <- NULL the model shrinks to 13k and is still evaluatable. Anyone see a problem with this? – John Dec 3 '12 at 20:49
  • If you turn you votes object to NULL you will not be able to make a prediction. – Jeffrey Evans Dec 3 '12 at 20:59
  • I think you are missing the point of rF - it always keeps as you said -> predicted, actual, and vote data - and there is assumption that the bigger data you train rF the bigger model would be; one solution is to cluster your rows / do feature selection on your cols (inptus) to make your matrix smaller; – java_xof Dec 3 '12 at 21:16
  • 1
    @John, why don't you post a small example showing that you can NULL out those components and still make predictions? – Ben Bolker Dec 3 '12 at 23:00
1

Trying to get out of the habit of posting answers as comments...

?randomForest advises against using the formula interface with large numbers of variables... are the results any different if you don't use the formula interface? The Value section of ?randomForest also tells you how to turn off some of the output (importance matrix, the entire forest, proximity matrix, etc.).

For example:

myModel <- randomForest(mydata[,!grepl("RESPONSE",names(mydata))],
  mydata$RESPONSE, ntree=50, maxnodes=30, importance=FALSE,
  localImp=FALSE, keep.forest=FALSE, proximity=FALSE, keep.inbag=FALSE)
  • 1
    None of the items that appear to be toggleable help. If I just do: myModel$votes <- NULL myModel$predicted <- NULL myModel$oob.times <- NULL myModel$y <- NULL the model shrinks to 13k and is still evaluatable. Anyone see a problem with this? – John Dec 3 '12 at 20:50
  • 1
    It doesn't seem like keep.forest=FALSE would be a good idea if you want to make predictions with the model. – Ken Williams Jan 22 '16 at 16:41
1

You can make use of tuneRF function in R to know the number of trees and make the size smaller.

tuneRF(data_train, data_train$Response, stepFactor = 1.2, improve = 0.01, plot = T, trace = T)

use ?tuneRF to know more about inside variables.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.