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Having a classification problem, I am using SVM for prediction in R. In dataset, there are integer as well as categorical variables. I got error while predicting with predict method.

    svp3c <- ksvm(input_dataset3$isCRgt3~., data=input_dataset3,type="C-svc")
    p3<-predict(svp3c,newdata=input_dataset_prediction[,-1],type="response")

    error :: Error in which.max(votematrix[, x]) : subscript out of bounds

For this modeling

First : developed model with training dataset

second : saved and Load model for prediction on testing dataset

Training Dataset sample

Headning :
head1(int),head2(character-url),head3(character-url),head4(character-url),head5(character),head6(character),haed7(int),head8(int),head9(int),head10(int),head11(int)

Data:    
"0","10","/","/index.php?main_page=logoff","(not set)","rc317a","organic","0","4","20092","5023","0"
"1","11","/","/offwhite-churidar-kameez-set-p-17381.html","(not set)","rc317a","organic","0","4","20092","5023","0"

[Download Sample Dataset] http://www.2shared.com/file/tQRapbBt/input_dataset3.html

[Reproduce R script] http://www.2shared.com/file/NpDs5V-9/data1_train.html

Can any one give suggestion?

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Does input_dataset_prediction[,-1] has exactly the same number of columns as input_dataset3 minus one? Also, svp3c <- ksvm( isCRgt3~., data=input_dataset3,type="C-svc") should work. –  January Oct 17 '12 at 10:23
    
Thanks January for suggestion, –  Vignesh Oct 17 '12 at 11:14
    
@january, I have same numbers of column in input_dataset_prediction and input_dataset3. –  Vignesh Oct 17 '12 at 11:15
    
can you post your data files somewhere? –  January Oct 17 '12 at 11:17
    
@Janusary, From this link(2shared.com/file/tQRapbBt/input_dataset3.html 2shared.com/file/UNixEOah/input_dataset_prediction.html) you will get sample dataset.. –  Vignesh Oct 17 '12 at 12:08

1 Answer 1

I encountered the same problem with a different data set. I first noticed that predict returned fewer predictions than test cases. It turned out that one of the integer variables in the test dataframe contained NA. Changing the NA to -1 eliminated the error.
TBC - I haven't thought through the implications of setting the variable to -1 but it has eliminated the error and now get the correct number of predictions.

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