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p.56 - How did you obtain the 62.5% for P(Fraud|Gift, Promo)? #5

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markhern opened this issue Jan 31, 2017 · 2 comments
Open

p.56 - How did you obtain the 62.5% for P(Fraud|Gift, Promo)? #5

markhern opened this issue Jan 31, 2017 · 2 comments

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@markhern
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I only have your Ruby book and don't have your Python book yet, so maybe its covered there, but it would have been a big help to see this 62.5% explained. I guess I would need to understand what comprised the 'magical Z' as well.

@hexgnu
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hexgnu commented Feb 8, 2017

Hey there,

I'll take a look at the book today and see if I can explain it. I have gotten more questions about the Naive Bayesian Chapter than any other chapter so I have revisited and revised that chapter in the new book :).

Stay tuned

@markhern
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Yes, please do give it a shot. I look forward to checking out your upcoming ML book in python as well.

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