English

Strategic A/B testing via Maximum Probability-driven Two-armed Bandit

Machine Learning 2025-07-01 v1 Machine Learning Probability

Abstract

Detecting a minor average treatment effect is a major challenge in large-scale applications, where even minimal improvements can have a significant economic impact. Traditional methods, reliant on normal distribution-based or expanded statistics, often fail to identify such minor effects because of their inability to handle small discrepancies with sufficient sensitivity. This work leverages a counterfactual outcome framework and proposes a maximum probability-driven two-armed bandit (TAB) process by weighting the mean volatility statistic, which controls Type I error. The implementation of permutation methods further enhances the robustness and efficacy. The established strategic central limit theorem (SCLT) demonstrates that our approach yields a more concentrated distribution under the null hypothesis and a less concentrated one under the alternative hypothesis, greatly improving statistical power. The experimental results indicate a significant improvement in the A/B testing, highlighting the potential to reduce experimental costs while maintaining high statistical power.

Keywords

Cite

@article{arxiv.2506.22536,
  title  = {Strategic A/B testing via Maximum Probability-driven Two-armed Bandit},
  author = {Yu Zhang and Shanshan Zhao and Bokui Wan and Jinjuan Wang and Xiaodong Yan},
  journal= {arXiv preprint arXiv:2506.22536},
  year   = {2025}
}

Comments

25 pages, 14 figures

R2 v1 2026-07-01T03:37:08.698Z