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Cracking Hypothesis Testing Problems in Data Science Interviews | Binomial test, z-test and t-test

This video is part 1 of hypothesis testing problems in data science interviews.
Part 2 of hypothesis testing problems in data science interviews:
https://www.youtube.com/watch?v=6uw0A3aKwMc

00:00 Intro
00:34 Three types of questions
02:18 When to use binomial test, z-test and t-test
05:09 t-distribution vs z-distribution
06:50 Testing proportions
09:26 What's in the next video

Видео Cracking Hypothesis Testing Problems in Data Science Interviews | Binomial test, z-test and t-test канала Data Interview Pro
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18 февраля 2021 г. 4:00:04
00:09:53
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