Litcius/Paper detail

A/B Testing Intuition Busters

Ron Kohavi, Alex Deng, Lukas Vermeer

2022Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining21 citationsDOI

Abstract

A/B tests, or online controlled experiments, are heavily used in industry to evaluate implementations of ideas. While the statistics behind controlled experiments are well documented and some basic pitfalls known, we have observed some seemingly intuitive concepts being touted, including by A/B tool vendors and agencies, which are misleading, often badly so. Our goal is to describe these misunderstandings, the "intuition" behind them, and to explain and bust that intuition with solid statistical reasoning. We provide recommendations that experimentation platform designers can implement to make it harder for experimenters to make these intuitive mistakes.

Topics & Concepts

IntuitionComputer scienceImplementationData scienceManagement scienceSoftware engineeringPsychologyCognitive scienceEngineeringStatistics Education and MethodologiesStatistical Methods in Clinical TrialsGaussian Processes and Bayesian Inference
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