AI RESEARCH
Variance reduction combining pre-experiment and in-experiment data
arXiv CS.LG
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ArXi:2410.09027v2 Announce Type: replace-cross Online controlled experiments (A/B testing) are fundamental to data-driven decision-making in many companies. Improving the sensitivity of these experiments under fixed sample size constraints requires reducing the variance of the average treatment effect (ATE) estimator. Existing variance reduction techniques such as CUPED and CUPAC use pre-experiment data, but their effectiveness depends on how predictive those data are for outcomes measured during the experiment.