Evaluating A/B Testing Methodologies via Sample Splitting: Theory and Practice
Econometrics
2026-03-24 v2
Abstract
We develop a theoretical framework for sample splitting in A/B testing environments, where data for each test are partitioned into two splits to measure methodological performance when the true impacts of tests are unobserved. We show that sample-split estimators are generally biased for full-sample performance but consistently estimate sample-split analogues of it. We derive their asymptotic distributions, construct valid confidence intervals, and characterize the bias-variance trade-offs underlying sample-split design choices. We validate our theoretical results through simulations and provide implementation guidance for A/B testing products seeking to evaluate new estimators and decision rules.
Cite
@article{arxiv.2512.03366,
title = {Evaluating A/B Testing Methodologies via Sample Splitting: Theory and Practice},
author = {Ryan Kessler and James McQueen and Miikka Rokkanen},
journal= {arXiv preprint arXiv:2512.03366},
year = {2026}
}