I'm fitting classification models for binary issues using MLR package in R. For each model, I perform a cross-validation with embedded feature selection using "selectFeatures" function and retrieve mean AUCs over test sets. I would like next to retrieve predictions on the test sets for each fold but this function does not seem to support that. I already tried to plug selected predictors into the "resample" function to get it. It works, but performance metrics are different which is not suitable for my analysis. I also tried to check in caret package if it is possible but I have not seen a solution at first glance. Any idea how to do it?
Here is my code with synthetic data and with my attempt with "resample" function (again: not suitable in this current version as performance metrics are different) .
# 1. Find a synthetic dataset for supervised learning (two classes)
###################################################################
install.packages("mlbench")
library(mlbench)
data(BreastCancer)
# generate 1000 rows, 21 quantitative candidate predictors and 1 target variable
p<-mlbench.waveform(1000)
# convert list into dataframe
dataset<-as.data.frame(p)
# drop thrid class to get 2 classes
dataset2 = subset(dataset, classes != 3)
# 2. Perform cross validation with embedded feature selection
#############################################################
library(BBmisc)
library(nnet)
library(mlr)
# Choice of algorithm i.e. neural network
mL <- makeLearner("classif.nnet", predict.type = "prob")
# Choice of sampling plan: 10 fold cross validation with stratification of target classes
mRD = makeResampleDesc("CV", iters = 10,stratify = TRUE)
# Choice of feature selection strategy
ctrl = makeFeatSelControlSequential(method = "sffs", maxit = NA,alpha = 0.001)
# Choice of feature selection technique (stepwize family) and p-value
mFSCS = makeFeatSelControlSequential(method = "sffs", maxit = NA,alpha = 0.001)
# Choice of seed
set.seed(12)
# Choice of data
mCT <- makeClassifTask(data =dataset2, target = "classes")
# Perform the method
result = selectFeatures(mL,mCT, mRD, control = ctrl, measures = list(mlr::auc,mlr::acc,mlr::brier))
# Retrieve AUC and selected variables
analyzeFeatSelResult(result)
# Result: auc.test.mean=0.9614525 Variables selected: x.10, x.11, x.15, x.17, x.18
# 3. Retrieve predictions on tests sets (to later perform Delong tests on AUCs derived from multiple sets of candidate variables)
#################################################################################################################################
# create new dataset with selected predictors
keep <- c("x.10","x.11","x.15","x.17","x.18","classes")
dataset3 <- dataset2[ , names(dataset2) %in% keep]
# Perform same tasks with resample function instead of selectFeatures function to get predictions on tests set
mL <- makeLearner("classif.nnet", predict.type = "prob")
ctrl = makeFeatSelControlSequential(method = "sffs", maxit = NA,alpha = 0.001)
mRD = makeResampleDesc("CV", iters = 10,stratify = TRUE)
set.seed(12)
mCT <- makeClassifTask(data =dataset3, target = "classes")
r1r = resample(mL, mCT, mRD, measures = list(mlr::auc,mlr::acc,mlr::brier))
# Result: auc.test.mean=0.9673023