I was walking through the examples of the very nice book "Applied Predictive Modeling" by Max Kuhn and Kjell Johnson, unfortunately I got stuck in one of the examples using the
train() function and one of the
GermanCredit dataset provided by the
caret package for cross-validation of Support Vector Machines:
library(AppliedPredictiveModeling) library(caret) # preparing the data data(GermanCredit) GermanCredit <- GermanCredit[, -nearZeroVar(GermanCredit)] GermanCredit$CheckingAccountStatus.lt.0 <- NULL GermanCredit$SavingsAccountBonds.lt.100 <- NULL GermanCredit$EmploymentDuration.lt.1 <- NULL GermanCredit$EmploymentDuration.Unemployed <- NULL GermanCredit$Personal.Male.Married.Widowed <- NULL GermanCredit$Property.Unknown <- NULL GermanCredit$Housing.ForFree <- NULL set.seed(100) inTrain <- createDataPartition(GermanCredit$Class, p = .8)[] GermanCreditTrain <- GermanCredit[ inTrain, ] GermanCreditTest <- GermanCredit[-inTrain, ] # Grid selection for `sigma` and `cost` tuning parameters: library(kernlab) set.seed(231) sigDist <- sigest(Class ~ ., data = GermanCreditTrain, frac = 1) svmTuneGrid <- data.frame(.sigma = sigDist, .C = 2^(-2:7)) # SVM classification and cross-validation svmFit <- train(Class ~ ., data = GermanCreditTrain, method = "svmRadial", preProc = c("center", "scale"), tuneGrid = svmTuneGrid, trControl = trainControl(method = "repeatedcv", repeats = 5, classProbs = TRUE))
and it has thrown this error:
Error in comp(expr, env = envir, options = list(suppressUndefined = TRUE)) : could not find function "makeCenv"
sometimes this error message:
Loading required package: class Warning: namespace ‘compiler’ is not available and has been replaced by .GlobalEnv when processing object ‘GermanCredit’ Error in comp(expr, env = envir, options = list(suppressUndefined = TRUE)) : could not find function "makeCenv" In addition: Warning message: executing %dopar% sequentially: no parallel backend registered
Then I learned that
makeCenv() is in the
doMC package that was suggested as alternative for parallel computation or parallel processing, but I wouldn't go for this package since it is not available in Windows platform, I guess. Any alternative?
These errors appeared only when the code was run under
Rstudio IDE, things were fine from the default R console, so the problem is local to Rstudio, I guess. The time was a little bit long in R console (about 8min), though, I wonder how to speed up things given the hardware specs mentioned below.
My sessioninfo() output is here (Rstudio):
R version 3.0.2 (2013-09-25) Platform: i386-w64-mingw32/i386 (32-bit) locale:  LC_COLLATE=English_United States.1252 LC_CTYPE=English_United States.1252  LC_MONETARY=English_United States.1252 LC_NUMERIC=C  LC_TIME=English_United States.1252 attached base packages:  datasets grid splines utils stats graphics grDevices methods  base other attached packages:  proxy_0.4-10 e1071_1.6-1  class_7.3-9 kernlab_0.9-19  caret_5.17-7 foreach_1.4.1  AppliedPredictiveModeling_1.1-4 CORElearn_0.9.42  rpart_4.1-3 xtable_1.7-1  knitr_1.5 texreg_1.30  pastecs_1.3-15 boot_1.3-9  gridExtra_0.9.1 reshape2_1.2.2  plyr_1.8 scales_0.2.3  ggplot2_0.9.3.1 vcdExtra_0.5-11  gnm_1.0-6 vcd_1.3-1  corrplot_0.73 RColorBrewer_1.0-5  car_2.0-19 Hmisc_3.13-0  Formula_1.1-1 cluster_1.14.4  xlsx_0.5.5 xlsxjars_0.5.0  rJava_0.9-5 lmPerm_1.1-2  coin_1.0-23 survival_2.37-4  GPArotation_2012.3-1 psych_1.3.12  sos_1.3-8 brew_1.0-6  data.table_1.8.10 mice_2.18  nnet_7.3-7 MASS_7.3-29  lattice_0.20-23 loaded via a namespace (and not attached):  codetools_0.2-8 colorspace_1.2-4 dichromat_2.0-0 digest_0.6.4  evaluate_0.5.1 formatR_0.10 gtable_0.1.2 iterators_1.0.6  labeling_0.2 Matrix_1.1-0 modeltools_0.2-21 munsell_0.4.2  mvtnorm_0.9-9996 proto_0.3-10 qvcalc_0.8-8 relimp_1.0-3  stats4_3.0.2 stringr_0.6.2 tcltk_3.0.2 tools_3.0.2
sessionInfo() output from default R console:
R version 3.0.2 (2013-09-25) Platform: i386-w64-mingw32/i386 (32-bit) locale:  LC_COLLATE=English_United States.1252  LC_CTYPE=English_United States.1252  LC_MONETARY=English_United States.1252  LC_NUMERIC=C  LC_TIME=English_United States.1252 attached base packages:  datasets grDevices grid splines graphics utils stats  methods base other attached packages:  e1071_1.6-1 class_7.3-9 kernlab_0.9-19 caret_5.17-7  foreach_1.4.1 cluster_1.14.4 lattice_0.20-23 reshape2_1.2.2  plyr_1.8 scales_0.2.3 ggplot2_0.9.3.1 lmPerm_1.1-2  coin_1.0-23 survival_2.37-4 sos_1.3-8 brew_1.0-6 loaded via a namespace (and not attached):  codetools_0.2-8 colorspace_1.2-4 compiler_3.0.2 dichromat_2.0-0  digest_0.6.3 gtable_0.1.2 iterators_1.0.6 labeling_0.2  MASS_7.3-29 modeltools_0.2-21 munsell_0.4.2 mvtnorm_0.9-9996  proto_0.3-10 RColorBrewer_1.0-5 stats4_3.0.2 stringr_0.6.2  tools_3.0.2
There must be an interaction with
Rstudiosince it worked well in the default R console, based on the two sessionInfo() outputs of default R console and Rstudio, the difference was
compilerpackage. Strange, this pkg cannot be found in CRAN, I found a note here: http://www.inside-r.org/r-doc/compiler/compile saying that load(compiler) would be enough, when I did this in Rstudio: it was not possible with this error message:
Error: package ‘compiler’ was built before R 3.0.0: please re-install it
It worked finally from withing Rstudio after copy & paste the compiler package library from that of default R lib path to that of Rstudio lib path, but still the time is too long (about 8min), I would post a separate question of parallel processing given the hardware below and windows if that would help to find an answer sooner.
- My laptop is 2.1GHz dual core processor, 3GB, windows 32bit, any idea how to do parallel processing with
train()function? can you pls issue the R code for this, I would be very grateful indeed.