I read the following in the documentation of
strata: A (factor) variable that is used for stratified sampling.
sampsize: Size(s) of sample to draw. For classification, if sampsize is a vector of the length the number of strata, then sampling is stratified by strata, and the elements of sampsize indicate the numbers to be drawn from the strata.
For reference, the interface to the function is given by:
randomForest(x, y=NULL, xtest=NULL, ytest=NULL, ntree=500, mtry=if (!is.null(y) && !is.factor(y)) max(floor(ncol(x)/3), 1) else floor(sqrt(ncol(x))), replace=TRUE, classwt=NULL, cutoff, strata, sampsize = if (replace) nrow(x) else ceiling(.632*nrow(x)), nodesize = if (!is.null(y) && !is.factor(y)) 5 else 1, maxnodes = NULL, importance=FALSE, localImp=FALSE, nPerm=1, proximity, oob.prox=proximity, norm.votes=TRUE, do.trace=FALSE, keep.forest=!is.null(y) && is.null(xtest), corr.bias=FALSE, keep.inbag=FALSE, ...)
My question is: How exactly would one use
sampsize? Here is a minimal working example where I would like to test these parameters:
library(randomForest) iris = read.table("http://archive.ics.uci.edu/ml/machine-learning-databases/iris/iris.data", sep = ",", header = FALSE) names(iris) = c("sepal.length", "sepal.width", "petal.length", "petal.width", "iris.type") model = randomForest(iris.type ~ sepal.length + sepal.width, data = iris) > model 500 samples 6 predictors 2 classes: 'Y0', 'Y1' No pre-processing Resampling: Bootstrap (7 reps) Summary of sample sizes: 477, 477, 477, 477, 477, 477, ... Resampling results across tuning parameters: mtry ROC Sens Spec ROC SD Sens SD Spec SD 2 0.763 1 0 0.156 0 0 4 0.782 1 0 0.231 0 0 6 0.847 1 0 0.173 0 0 ROC was used to select the optimal model using the largest value. The final value used for the model was mtry = 6.
I come to these parameters since I would like RF to use bootstrap samples that respect the proportion of positives to negatives in my data.
This other thread, started a discussion on the topic, but it was settled without clarifying how one would use these parameters.