naive bayes (not the kernel ones) : what does it do?
I have a set of continuous features. I suppose to use the kernel naive bayes because the features are continuous. However, I use the non-kernel naive bayes, and still give me some predict result. How does the non-kernel naive bayes handle the continuous features? (Does it assume each feature to have a normal distribution)??
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Regards,
Marco