Hello Im using the KDD 1999 dataset and I was looking to apply naive bayes in matlab to it. What I want to know is the kdd dataset is a 494021x42 array of data, if you notice "training" and "target_class" below in the code for naive bayes:
training = [1;0;-1;-2;4;0]; % this is the sample data. target_class = ['posi';'zero';'negi';'negi';'posi';'zero']; % This should have the same number of rows as training data but why? % Training and Testing the classifier (between positive and negative) test = 10*randn(10,1) % this is for testing. I am generating random numbers. class = classify(test,training, target_class, 'diaglinear') % This command classifies the test data depening on the given training data using a Naive Bayes classifier % diaglinear is for naive bayes classifier; there is also diagquadratic
What I would like to know is "Target_class" related to the kdd dataset attack types?
back dos buffer_overflow u2r ftp_write r2l guess_passwd r2l imap r2l ipsweep probe land dos loadmodule u2r multihop r2l neptune dos nmap probe perl u2r phf r2l pod dos portsweep probe rootkit u2r satan probe smurf dos spy r2l teardrop dos warezclient r2l warezmaster r2l
Or is the target class the colum headers contained within the "test" set? i.e
protocol_type: symbolic. service: symbolic. flag: symbolic. src_bytes: continuous. dst_bytes: continuous. land: symbolic. wrong_fragment: continuous.