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I am now implementing an email filtering application using the Naive Bayes algorithm. My application uses the Spambase Data Set from the UCI Machine Learning Repository. Since the attributes are continuous, I calculate the probability using the Probability Density Function (PDF). However, when I evaluate the data using the k-fold cross validation, a training set may contain only 0 for one of its attributes. For this reason, I got a 0 standard deviation and the PDF returns NaN and it leads to a huge number of spams are not correctly classified with that training set. What should I do to fix the problem?

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You should pose at as a statistical problem to the Stats SO forum, or to the Statistics subforum of the Physics Forums. – Hot Licks Sep 10 '12 at 1:31

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up vote 2 down vote accepted

You could use a discrete PDF, which will always be bounded.

Alternatively, simply ignore any attribute with zero variance. There is no point in including distributions with zero variance, because they won't actually do anything. For example, you want to know how old I am, and then I tell you that I live on planet Earth. That shouldn't change your estimate, because every single piece of data you have is for people on planet Earth.

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I think I will just ignore attributes with zero variance then, thanks! – Peter Wong Sep 19 '12 at 0:17

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