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Przeglądaj wybrane metody obok siebie; wiersze, które się różnią, są wyróżnione.

Faktorialny test A/B×Test A/B adaptacyjny×
DziedzinaPlanowanie eksperymentówPlanowanie eksperymentów
RodzinaProcess / pipelineProcess / pipeline
Rok powstaniaFactorial design: 1920s–1930s; applied online as factorial A/B test: 2000s–2010s1952 (Robbins); applied to A/B testing from ~2010s onward
TwórcaRonald A. Fisher (factorial design); digital A/B testing popularized by Google, Microsoft, and Amazon in the 2000sHerbert Robbins (bandit framework); Thompson Sampling formalized by William R. Thompson
TypControlled online/field experimentAdaptive experimental design
Źródło pierwotneKohavi, R., Tang, D., & Xu, Y. (2020). Trustworthy Online Controlled Experiments: A Practical Guide to A/B Testing. Cambridge University Press. ISBN: 978-1108724265Russo, D., Van Roy, B., Kazerouni, A., Osband, I., & Wen, Z. (2018). A Tutorial on Thompson Sampling. Foundations and Trends in Machine Learning, 11(1), 1–96. DOI ↗
Inne nazwyfactorial split test, multi-factor A/B test, factorial online experiment, factorial controlled experimentadaptive AB test, bandit A/B test, multi-armed bandit testing, online adaptive experiment
Pokrewne66
PodsumowanieA factorial A/B test is a controlled online experiment that simultaneously manipulates two or more independent factors, each at two or more levels, exposing different user groups to every combination of factor levels. Rooted in Fisher's factorial design and operationalised at scale by tech companies, it enables researchers to estimate both the independent main effect of each factor and the interaction effects between factors — all from a single experimental run.An Adaptive A/B test is an experimental design that dynamically reallocates traffic or participants toward better-performing variants during the experiment itself, rather than holding allocations fixed until the end. Drawing on multi-armed bandit algorithms such as Thompson Sampling or Upper Confidence Bound (UCB), it balances the exploration of uncertain variants with the exploitation of those already showing superior performance, typically yielding higher aggregate outcomes while still producing valid inferential conclusions.
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ScholarGatePorównaj metody: Factorial A/B Test · Adaptive A/B test. Pobrano 2026-06-18 z https://scholargate.app/pl/compare