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I'm trying to work around the randomForest package limit of 32 levels for factors.

I have a data set with 100 levels in one of the factor variables.

I wrote the following code to see what things would look like using sampling with replacement and how many tries it would take to get certain % of levels selected.

sampAll <- c()
nums1 <- seq(1,102,1)
for(i in 1:20){
    samp1 <- sample(nums1, 32)
    sampAll <- unique(cbind(sampAll, samp1))
    outSamp1 <- nums1[-(sampAll[,1:ncol(sampAll)])]
    print(paste(i, " | Remaining: ",length(outSamp1)/102,sep=""))

[1] "1 | Remaining: 0.686274509803922"
[1] "2 | Remaining: 0.490196078431373"
[1] "3 | Remaining: 0.333333333333333"
[1] "4 | Remaining: 0.254901960784314"
[1] "5 | Remaining: 0.215686274509804"
[1] "6 | Remaining: 0.147058823529412"
[1] "7 | Remaining: 0.117647058823529"
[1] "8 | Remaining: 0.0980392156862745"
[1] "9 | Remaining: 0.0784313725490196"
[1] "10 | Remaining: 0.0784313725490196"
[1] "11 | Remaining: 0.0490196078431373"
[1] "12 | Remaining: 0.0294117647058824"
[1] "13 | Remaining: 0.0196078431372549"
[1] "14 | Remaining: 0.00980392156862745"
[1] "15 | Remaining: 0.00980392156862745"
[1] "16 | Remaining: 0.00980392156862745"
[1] "17 | Remaining: 0.00980392156862745"
[1] "18 | Remaining: 0"
[1] "19 | Remaining: 0"
[1] "20 | Remaining: 0"

What I'm debating is whether to sample with or without replacement.

I'm thinking about:

  1. getting a sample of 32 of the 100 factors,
  2. using those lines to run the randomForest,
  3. predicting the test set with the randomForest and
  4. repeating this process either (a) 3(WITHOUT replacement) or (b) 10-15 times (WITH replacement).
  5. taking the 3 or 10-15 predicted values, finding the average and using that as a final predictor.

I'm curious if anyone has tried something like this or if I'm breaking any rules (introducing bias, etc.) or if anyone has any suggestions.

NOTE: I've cross-posted this question on Stats-Overflow / Cross-Validated as well.

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closed as off topic by casperOne Jan 8 '12 at 17:13

Questions on Stack Overflow are expected to relate to programming within the scope defined by the community. Consider editing the question or leaving comments for improvement if you believe the question can be reworded to fit within the scope. Read more about reopening questions here.If this question can be reworded to fit the rules in the help center, please edit the question.

Closed as cross-site dupe:… – casperOne Jan 8 '12 at 17:13

2 Answers 2

up vote 0 down vote accepted

I could recommend 2 ways:

  1. You can transform you 100-level variable into 100 binary variables. Each of them will represent one original level (0 - false, 1 - true). Thus you will be able to work with the whole dataset and make random forest model as well. But in this case the memory consumption by your dataset will increase and you will probably need to use some additional packages for working with huge datasets.

  2. Second posibility is to make many samples of your original dataset with replacement. Because if you will split dataset without replacement you will have a bias in the model. But nevertheless I think you will need to make much more than 10-15 splits to avoid bias. I can not say how many exactly. Maybe around several hundreds or more. It depends on your dataset. Because if number of objects of each out of 100 levels is significantly different, then after spliting you will receive samples of significantly different size, and it can affect predictive ability of the model. In such a case number of splits should be increased.

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You could also split your 100-level variable into 4 separate variables, each with 25 levels. This would result in tricky aliasing issues with a linear model, but you're not worried about that with a random forest.

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