Improving the Estimation of Lifetime Effects in A/B Testing via Treatment Locality
Shuze Chen, David Simchi-Levi, Chonghuan Wang

TL;DR
This paper develops new statistical methods to better estimate long-term effects of localized treatments in dynamic systems using short-term A/B test data, improving efficiency and accuracy.
Contribution
It introduces optimal inference techniques and variance reduction methods that leverage treatment locality in Markov Decision Processes for long-term effect estimation.
Findings
Achieves linear variance reduction with the number of test arms.
Provides tighter variance bounds considering locality.
Extends framework to a broad class of estimators.
Abstract
Utilizing randomized experiments to evaluate the effect of short-term treatments on the short-term outcomes has been well understood and become the golden standard in industrial practice. However, as service systems become increasingly dynamical and personalized, much focus is shifting toward maximizing long-term outcomes, such as customer lifetime value, through lifetime exposure to interventions. Our goal is to assess the impact of treatment and control policies on long-term outcomes from relatively short-term observations, such as those generated by A/B testing. A key managerial observation is that many practical treatments are local, affecting only targeted states while leaving other parts of the policy unchanged. This paper rigorously investigates whether and how such locality can be exploited to improve estimation of long-term effects in Markov Decision Processes (MDPs), a…
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Taxonomy
TopicsStatistical and Computational Modeling · Simulation Techniques and Applications · Bayesian Modeling and Causal Inference
Methodstravel james · Focus
