Asymptotically optimal sampling policy for selecting top-m alternatives
| Year of publication: |
2023
|
|---|---|
| Authors: | Zhang, Gongbo ; Peng, Yijie ; Zhang, Jianghua ; Zhou, Enlu |
| Published in: |
INFORMS journal on computing : JOC ; charting new directions in operations research and computer science ; a journal of the Institute for Operations Research and the Management Sciences. - Linthicum, Md. : INFORMS, ISSN 1526-5528, ZDB-ID 2004082-9. - Vol. 35.2023, 6, p. 1261-1285
|
| Subject: | asymptotic optimality | Bayesian | sequential sampling | simulation | subset selection | Stichprobenerhebung | Sampling | Simulation | Bayes-Statistik | Bayesian inference | Statistische Methodenlehre | Statistical theory | Schätztheorie | Estimation theory |
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