Unfolding Naïve Bayes from Scratch
Naïve Bayes explained via math, pure Python and then Scikit-learn.
naive-bayes scikit-learn python tutorial article code

The sole purpose is to deeply and clearly understand the working of a well know Text Classification ML Algorithm (Naïve Bayes) without being trapped in the gibberish mathematical jargon that is often used in the explanation of ML Algorithms!

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