Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

this is my data:

 Anon_Student_Id           Problem_Hierarchy Problem_Name Problem_View Number_Of_Steps Sum_Of_Steps_Duration Sum_Of_Hints result
1      80nlN05JQ6 Unit ES_01, Section ES_01-6         EG21            8               3                    28            0      1
2      80nlN05JQ6 Unit ES_01, Section ES_01-6         EG21            9               3                    37            0      0
3      80nlN05JQ6 Unit ES_01, Section ES_01-6         EG21           10               3                    50            0      0
4      80nlN05JQ6 Unit ES_01, Section ES_01-6         EG22            1               3                    78            0      0
5      80nlN05JQ6 Unit ES_01, Section ES_01-6         EG22            2               3                    41            0      1
6      80nlN05JQ6 Unit ES_01, Section ES_01-6         EG22            3               3                    92            0      0

I'm trying to predict the attribute "result" by SVM model :

model<-svm(result~., scale=FALSE, data=W)

prediction <- predict(model, W[,-8])

table(pred = prediction, true = W[,8])

But I get this error:

"Error in table(pred = prediction, true = W[, 8]) : 
  all arguments must have the same length"

When I checked it I got: length(pred)=2042 and length(true)=2043

Why I'm getting this error?? (I mean- why i'm getting different lengths? "pred" and "true" are supposed to have the same length)

Thanks!

share|improve this question
2  
Maybe I miss something but 2042 != 2043, isn't it? –  agstudy Jun 17 '13 at 20:06
    
of course but why i'm getting different lengths? –  user2494680 Jun 18 '13 at 4:52
1  
@agstudy obviously 2042 == 2043, to within a margin of error. @OP: you might have an NA somewhere in your dataset. The predict function should give an NA prediction, but it's possible it's just dropping that case entirely. Post the package you're using to fit the SVM. –  Hong Ooi Jun 18 '13 at 5:31
    
@HongOoi :) good point! I guess it is e1071 package. –  agstudy Jun 18 '13 at 5:47
    
yes, i'm using e1071 package. –  user2494680 Jun 18 '13 at 10:48

1 Answer 1

Problem solved: i got rid of all the na values of my data using na.omit(W) and then it worked. thank you!

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.