Getting numbers is easy; getting numbers you can trust is hard. This practical guide by experimentation leaders at Google, LinkedIn, and Microsoft will teach you how to accelerate innovation using trustworthy online controlled experiments, or A/B tests. Based on practical experiences at companies that each run more than 20,000 controlled experiments a year, the authors share examples, pitfalls, and advice for students and industry professionals getting started with experiments, plus deeper dives into advanced topics for practitioners who want to improve the way they make data-driven decisions. Learn how to Use the scientific method to evaluate hypotheses using controlled experiments Define key metrics and ideally an Overall Evaluation Criterion Test for trustworthiness of the results and alert experimenters to violated assumptions Build a scalable platform that lowers the marginal cost of experiments close to zero Avoid pitfalls like carryover effects and Twyman's law Understand how statistical issues play out in practice.
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Product Details
Weight: 400g
Dimensions: 152 x 226mm
Publication Date: 02 Apr 2020
Publisher: Cambridge University Press
Publication City/Country: United Kingdom
Language: English
ISBN13: 9781108724265
About Diane TangRon KohaviYa Xu
Ron Kohavi is a Technical Fellow and corporate VP of Microsoft's Analysis and Experimentation and was previously director of data mining and personalization at Amazon. He received his Ph.D. in Computer Science from Stanford University. His papers have over 40000 citations and three of them are in the top 1000 most-cited papers in Computer Science. Diane Tang is a Google Fellow with expertise in large-scale data analysis and infrastructure online controlled experiments and ads systems. She has an A.B. from Harvard and an M.S./Ph.D. from Stanford University with patents and publications in mobile networking information visualization experiment methodology data infrastructure data mining and large data. Ya Xu heads Data Science and Experimentation at LinkedIn. She has published several papers on experimentation and is a frequent speaker at top-tier conferences and universities. She previously worked at Microsoft and received her Ph.D. in Statistics from Stanford University.