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Data-Driven Sequential Sampling for Tail Risk Mitigation

Published: March 10, 2025 | arXiv ID: 2503.06913v1

By: Dohyun Ahn, Taeho Kim

Potential Business Impact:

Finds the best choice when outcomes are uncertain.

Business Areas:
A/B Testing Data and Analytics

Given a finite collection of stochastic alternatives, we study the problem of sequentially allocating a fixed sampling budget to identify the optimal alternative with a high probability, where the optimal alternative is defined as the one with the smallest value of extreme tail risk. We particularly consider a situation where these alternatives generate heavy-tailed losses whose probability distributions are unknown and may not admit any specific parametric representation. In this setup, we propose data-driven sequential sampling policies that maximize the rate at which the likelihood of falsely selecting suboptimal alternatives decays to zero. We rigorously demonstrate the superiority of the proposed methods over existing approaches, which is further validated via numerical studies.

Page Count
52 pages

Category
Statistics:
Methodology