VariableImportanceTable {LOGANTree} | R Documentation |
Table comparing the feature importance for tree-based learning methods.
Description
Table comparing the feature importance for tree-based learning methods.
Usage
VariableImportanceTable(DT = NULL, RF = NULL, GBM = NULL)
Arguments
DT |
A fitted decision tree model object |
RF |
A fitted random forest model object |
GBM |
A fitted gradient boosting model object |
Value
This function returns a data frame that compares the feature importance from different tree-based machine learning methods. These measures are computed via the caret package.
Examples
library(gbm)
colnames(training)[14] <- "perf"
ensemblist <- TreeModels(traindata = training,
methodlist = c("dt", "rf","gbm"),checkprogress = TRUE)
VariableImportanceTable(DT = ensemblist$ModelObject$rpart,
RF = ensemblist$ModelObject$ranger,GBM = ensemblist$ModelObject$gbm)
VariableImportanceTable(DT = ensemblist$ModelObject$rpart,
RF = ensemblist$ModelObject$ranger)
VariableImportanceTable(DT = ensemblist$ModelObject$rpart)
[Package LOGANTree version 0.1.1 Index]