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Main Authors: Du, Jianzhong, Ryzhov, Ilya O., Gao, Siyang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.02138
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author Du, Jianzhong
Ryzhov, Ilya O.
Gao, Siyang
author_facet Du, Jianzhong
Ryzhov, Ilya O.
Gao, Siyang
contents The ranking and selection problem is a popular framework in the simulation literature for studying optimal information collection. We study a version of this problem in which the simulation output for each design is normally distributed with both its mean and variance being unknown. Using a Bayesian representation of the probability of correct selection, which allows us to explicitly model uncertainty about the variance, we provide a theoretical characterization of the optimal allocation of the simulation budget. Prior work on optimal budget allocation was unable to distinguish between known and unknown sampling variance. We show the impact of this type of uncertainty on the allocation, and design new sequential procedures that can be guaranteed to learn the optimal allocation asymptotically without the need for tuning or forced exploration.
format Preprint
id arxiv_https___arxiv_org_abs_2509_02138
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Optimal Simulation Budget Allocation Under Unknown Sampling Variance
Du, Jianzhong
Ryzhov, Ilya O.
Gao, Siyang
Optimization and Control
The ranking and selection problem is a popular framework in the simulation literature for studying optimal information collection. We study a version of this problem in which the simulation output for each design is normally distributed with both its mean and variance being unknown. Using a Bayesian representation of the probability of correct selection, which allows us to explicitly model uncertainty about the variance, we provide a theoretical characterization of the optimal allocation of the simulation budget. Prior work on optimal budget allocation was unable to distinguish between known and unknown sampling variance. We show the impact of this type of uncertainty on the allocation, and design new sequential procedures that can be guaranteed to learn the optimal allocation asymptotically without the need for tuning or forced exploration.
title Optimal Simulation Budget Allocation Under Unknown Sampling Variance
topic Optimization and Control
url https://arxiv.org/abs/2509.02138