Decision tree vs Naive Bayes classifier

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In which cases is it better to use a Decision tree and other cases a Naive Bayes classifier?Why use one of them in certain cases? And the other in different cases? (By looking at its functionality, not at the algorithm)
Feb 28 in Machine Learning by Dev
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