Let me say, first up, that I'm a WEKA newbie.
I'm using WEKA for a binary classification problem where certain metrics are being used to get a yes/no answer for the instances.
To exemplify the issue, here's the confusion matrix I got for a set with 288 instances, with 190 'yes' and 98 'no' values using BayesNet:
a b <-- classified as 190 0 | a = yes 98 0 | b = no
This absolute separation is the case with some other classifiers as well, but not with all of them. That said, even if classifiers don't have values polarized to such a degree, they do have a definite bias for the predominant class. For example, here's the result with RandomForest:
a b <-- classified as 164 34 | a = yes 62 28 | b = no
I'm pretty certain I'm missing something very obvious.