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I'm running a slight variation of the example contained in the help of the function timeseriesWF but using a user defined function (svmR) instead of svm. However I get Error in UseMethod("predict") : no applicable method for 'predict' applied to an object of class "c('double', 'numeric')" but don't understand why the example works with svmbut doesn't with svmR:

library(DMwR)
library(e1071)
getSymbols('^GSPC',from='2008-01-01',to='2012-12-31')
data.model <- specifyModel(
  Next(100*Delt(Ad(GSPC))) ~ Delt(Ad(GSPC),k=1:10)+Delt(Vo(GSPC),k=1:3))
data <- as.data.frame(modelData(data.model))
colnames(data)[1] <- 'PercVarClose'

svmR <- function(form,train,test,b.t=0.1,s.t=-0.1,...) {
  require(e1071)
  t <- svm(form,train,...)
  p <- predict(t,test)
}

spExp <- experimentalComparison(
  c(dataset(PercVarClose ~ .,data,'SP500_2008_2012')),
  variants('timeseriesWF',
           learner='svmR',learner.pars=list(cost=10),
           type=c('slide','grow'),relearn.step=200,
           evaluator.pars=list(stats='nmse')),
  mcSettings(2,0.5,0.25))

EDIT: linux and windows run different versions of the package.

share|improve this question
    
Without installing the packages, I guess svm returns an object of class "svm", which experimentalComparison knows how to handle (apparently by calling predict, which will use the predict.svm method). Your function doesn't return an object of the appropriate class. – Roland Jul 4 '13 at 17:05
    
@Roland thanks for your answer. Do you know how can I change the function so it returns double class? I'm confused because the data passed to svm is a dataframe. – AP13 Jul 4 '13 at 19:20
    
Obviously you haven't understood my comment. Reread it. – Roland Jul 5 '13 at 7:43
    
@Roland I see that if pass an argument of class svm it works however I would like to generalice as much as possible so I can use other type of learners as well with the same function. In fact if I use nnet then it works as well but not with my function so could you help me to get the return of an approapriate generic class? – AP13 Jul 5 '13 at 12:48

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