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I'm testing the kernlab package in a regression problem. It seems it's a common issue to get 'Error in .local(object, ...) : test vector does not match model ! when passing the ksvm object to the predict function. However I just found answers to classification problems or custom kernels that are not applicable to my problem (I'm using a built-in one for regression). I'm running out of ideas here, my sample code is:

data <- matrix(rnorm(200*10),200,10)
tr <- data[1:150,]
ts <- data[151:200,]

mod <- ksvm(x = tr[,-1],
            y = tr[,1],
            kernel = "rbfdot", type = 'nu-svr',
            kpar = "automatic", C = 60, cross = 3)

pred <- predict(mod, 
                ts
                )
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1 Answer 1

up vote 1 down vote accepted

You forgot to remove the y variable in the test set, and so it fails because the number of predictors don't match. This will work:

predict(mod,ts[,-1])
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sometimes the function requires the response, other times doesn't... thanks! –  AP13 Sep 24 '13 at 19:14
    
@eccehomo When does it require the response? –  nograpes Sep 24 '13 at 19:16
    
I was referring to other packages like caret. If you try function trainwith method = rf for instance you should have to supply the response as well for predictions. –  AP13 Sep 24 '13 at 19:21

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