ScholarGate
Assistent
Process / pipelineDigital experimentation / causal inference

Online Controlled Experiment

Online controlled experiments, commonly called A/B tests, randomly split live web or app traffic between a control and one or more treatment variants to measure the causal effect of a change on user behavior. Ron Kohavi, Diane Tang, and Ya Xu — who built and ran experimentation platforms at Microsoft, Google, and LinkedIn — set out the modern theory and best practice in their 2020 Cambridge book, and Kohavi's earlier survey with colleagues established the practical foundations of running trustworthy web experiments at scale. The discipline centers on a clearly defined Overall Evaluation Criterion (OEC) that captures long-term value, rigorous randomization, adequate statistical power, and a battery of trustworthiness checks such as the Sample Ratio Mismatch test. Because users are randomized, the difference in metrics between variants is an unbiased estimate of the change's causal impact — the gold standard for marketing and product decisions that attribution and observational analysis can only approximate. The output is a confident ship/no-ship decision: did this headline, layout, price, or feature actually move the metrics that matter, by how much, and with what certainty?

Åpne i MethodMindSnartBruk, sammenlign, få veiledning
Verktøy og ressurser
Last ned lysbilder
Lær og utforsk
VideoSnart

Les hele metoden

Kun for medlemmer

Logg inn med en gratis konto for å lese denne delen.

Logg inn

Metodekart

Nabolaget av beslektede metoder — velg en node for å utforske.

Kilder

  1. Kohavi, R., Tang, D., & Xu, Y. (2020). Trustworthy Online Controlled Experiments: A Practical Guide to A/B Testing. Cambridge University Press. ISBN: 9781108724265
  2. Kohavi, R., Longbotham, R., Sommerfield, D., & Henne, R. M. (2009). Controlled experiments on the web: survey and practical guide. Data Mining and Knowledge Discovery, 18(1), 140-181. DOI: 10.1007/s10618-008-0114-1

Slik siterer du denne siden

ScholarGate. (2026, June 23). Online Controlled Experiment (A/B Testing for Marketing). ScholarGate. https://scholargate.app/no/marketing-science/online-controlled-experiment

Hvilken metode?

Sett denne metoden ved siden av sin nærmeste slektning og les dem side om side — biblioteket legger bøkene på bordet; valget er ditt.

Sammenlign side om side

Referert av

ScholarGateOnline Controlled Experiment (Online Controlled Experiment (A/B Testing for Marketing)). Hentet 2026-06-24 fra https://scholargate.app/no/marketing-science/online-controlled-experiment · Datasett: https://doi.org/10.5281/zenodo.20539026