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1
Introduction
2
Experiment Definition
3
Create Dataset for A/B Test
4
Hypothesis Testing
5
Issue of Interpretability
6
Bayesian Testing: Constructing Prior
7
Bayesian Testing: Constructing Posterior
8
Introducing a Continuous Metric: Prices
9
Understand Pricing Distributions
10
Add prices to dataset
11
Bayesian Math
12
Coded Math
13
Construct Priors, Posteriors
14
Interpret Results for Continuous Metric
Description:
Dive into a comprehensive tutorial on A/B testing for data scientists. Learn how to define experiments, create datasets, and conduct hypothesis testing. Explore the issue of interpretability and delve into Bayesian testing, including constructing priors and posteriors. Discover how to work with continuous metrics like prices, understand pricing distributions, and apply Bayesian math. Follow along with coded examples and learn to interpret results for continuous metrics. Access the provided GitHub repository for hands-on practice and refer to recommended resources for deeper understanding of Bayesian mathematics and beta distributions.

A Guide to A/B Testing as a Data Scientist

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