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I am solving a multiclass classification problem and trying to use Generalized Boosted Models (gbm package in R). The issue I faced: caret's train function with method="gbm" seems not to work with multiclass data properly. A simple example is presented below.

library(gbm)
library(caret)
data(iris)
fitControl <- trainControl(method="repeatedcv",
                           number=5,
                           repeats=1,
                           verboseIter=TRUE)
set.seed(825)
gbmFit <- train(Species ~ ., data=iris,
                method="gbm",
                trControl=fitControl,
                verbose=FALSE)
gbmFit

The output is

+ Fold1.Rep1: interaction.depth=1, shrinkage=0.1, n.trees=150 
predictions failed for Fold1.Rep1: interaction.depth=1, shrinkage=0.1, n.trees=150 
- Fold1.Rep1: interaction.depth=1, shrinkage=0.1, n.trees=150 
+ Fold1.Rep1: interaction.depth=2, shrinkage=0.1, n.trees=150 
...
+ Fold5.Rep1: interaction.depth=3, shrinkage=0.1, n.trees=150 
predictions failed for Fold5.Rep1: interaction.depth=3, shrinkage=0.1, n.trees=150 
- Fold5.Rep1: interaction.depth=3, shrinkage=0.1, n.trees=150 
Aggregating results
Selecting tuning parameters
Fitting interaction.depth = numeric(0), n.trees = numeric(0), shrinkage = numeric(0) on full training set
Error in if (interaction.depth < 1) { : argument is of length zero

Yet if I try to use gbm without caret wrapper, I get nice results.

set.seed(1365)
train <- createDataPartition(iris$Species, p=0.7, list=F)
train.iris <- iris[train,]
valid.iris <- iris[-train,]
gbm.fit.iris <- gbm(Species ~ ., data=train.iris, n.trees=200, verbose=FALSE)
gbm.pred <- predict(gbm.fit.iris, valid.iris, n.trees=200, type="response")
gbm.pred <- as.factor(colnames(gbm.pred)[max.col(gbm.pred)]) ##!
confusionMatrix(gbm.pred, valid.iris$Species)$overall

FYI, code on line marked by ##! converts a matrix of class probabilities returned by predict.gbm to a factor of most probable classes. The output is

      Accuracy          Kappa  AccuracyLower  AccuracyUpper   AccuracyNull AccuracyPValue  McnemarPValue 
  9.111111e-01   8.666667e-01   7.877883e-01   9.752470e-01   3.333333e-01   8.467252e-16            NaN 

Any suggestions how to make caret work properly with gbm on multiclass data?

UPD:

sessionInfo()
R version 2.15.3 (2013-03-01)
Platform: x86_64-pc-linux-gnu (64-bit)

locale:
 [1] LC_CTYPE=en_US.UTF-8       LC_NUMERIC=C               LC_TIME=en_US.UTF-8        LC_COLLATE=en_US.UTF-8    
 [5] LC_MONETARY=en_US.UTF-8    LC_MESSAGES=en_US.UTF-8    LC_PAPER=C                 LC_NAME=C                 
 [9] LC_ADDRESS=C               LC_TELEPHONE=C             LC_MEASUREMENT=en_US.UTF-8 LC_IDENTIFICATION=C       

attached base packages:
[1] splines   stats     graphics  grDevices utils     datasets  methods   base     

other attached packages:
 [1] e1071_1.6-1      class_7.3-5      gbm_2.0-8        survival_2.36-14 caret_5.15-61    reshape2_1.2.2   plyr_1.8        
 [8] lattice_0.20-13  foreach_1.4.0    cluster_1.14.3   compare_0.2-3   

loaded via a namespace (and not attached):
[1] codetools_0.2-8 compiler_2.15.3 grid_2.15.3     iterators_1.0.6 stringr_0.6.2   tools_2.15.3   
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Just a question , why are you using 2 different seeds? 825 and 1365? –  agstudy Mar 23 '13 at 10:49
1  
Does it matter? 825 - is a seed from an example code I took form caret.r-forge.r-project.org, 1365 - seed I used in my project. –  mar_one Mar 23 '13 at 12:14

2 Answers 2

up vote 2 down vote accepted

This is an issue that I'm working on right now.

It would help if you posted the results of sessionInfo().

Also, getting the latest gbm off of https://code.google.com/p/gradientboostedmodels/ might solve the problem.

Max

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The problem is related to code.google.com/p/gradientboostedmodels/issues/detail?id=12. I have a work around, but I'd like to avoid it since it is only an issue with multinomial data. I'll contact the maintainer again to see if there is an eta. –  topepo Mar 23 '13 at 22:07

Update: Caret can do multi-class classification.

You should ensure that class label is in alpha-numeric format (starting with a letter).

For example: if you data has labels "1", "2", "3" then change these to "Seg1", "Seg2" and "Seg3", else caret with fail.

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