I start using NaiveBayes/Simple classifier for classification (Weka), however I have some problems to understand while training the data. The data set I'm using is weather.nominal.arff.
While I use use training test from the options, the classifier result is:
Correctly Classified Instances 13 - 92.8571 % Incorrectly Classified Instances 1 - 7.1429 % a b classified as 9 0 a =yes 1 4 b = no
My first question what should I understand from the incorrect classified instances? Why such a problem occurred? which attribute collection is classified incorrect? is there a way to understand this?
Secondly, when I try the 10 fold cross validation, why I get different (less) correctly classified instances?
The results are:
Correctly Classified Instances 8 57.1429 % Incorrectly Classified Instances 6 42.8571 % a b <-- classified as 7 2 | a = yes 4 1 | b = no