I'm using 2 classifiers from Weka: LMT (under trees) and Rotation-forest (under meta).
My data-set consists of 8 attributes; the 8th is the class.
For classification, I manually generate instances; Those instances are 7-attribute long (due to the fact that the class is what I'm looking for(.
When using LMT there's no error message. But- using Rotation-Forest, I get the following message:
java.lang.ArrayIndexOutOfBoundsException: 7 at weka.core.Instance.value(Instance.java:975) at weka.filters.unsupervised.attribute.Remove.input(Remove.java:252) at weka.filters.unsupervised.attribute.RemoveUseless.input(RemoveUseless.java:128) at weka.classifiers.meta.RotationForest.distributionForInstance(RotationForest.java:1136)
Therefore I have no other option but to add a "dummy" class.
My question is- am I doing something wrong? is my classification wrong? Why is the behavior different between the two?
The relevant code is:
List<Double> rawValue = ent.getValue(); rawValue.add(0.0); //adding the dummy classification Instance inst = generateInstance(rawValue); tmpScore = classifier.distributionForInstance(inst); //here the exception might be raised