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Input Uncertainty Quantification Via Simulation Bootstrapping

  • Manjing Zhang*
  • , Yulin He
  • , Guangwu Liu
  • , Shan Dai
  • *Corresponding author for this work

    Research output: Chapters, Conference Papers, Creative and Literary WorksRGC 32 - Refereed conference paper (with host publication)peer-review

    Abstract

    Input uncertainty, which refers to the output variability arising from statistical noise in specifying the input models, has been intensively studied recently. Ignoring input uncertainty often leads to poor estimates of system performance. In the non-parametric setting, input uncertainty is commonly estimated via bootstrap, but the performance by traditional bootstrap resampling is compromised when input uncertainty is also associated with simulation uncertainty. Nested simulation is studied to improve the performance by taking variance estimation into account, but suffers from a substantial burden on required simulation effort. To tackle the above problems, this paper introduces a non-nested method to build asymptotically valid confidence intervals for input uncertainty quantification. The convergence properties are studied, which establish statistical guarantees for the proposed estimators related to real-data size and bootstrap budget. An easy-implemented algorithm is also provided. Numerical examples show that the estimated confidence intervals perform satisfactorily under given confidence levels. © 2023 IEEE.
    Original languageEnglish
    Title of host publication2023 Winter Simulation Conference (WSC)
    PublisherIEEE
    Pages3693-3704
    ISBN (Electronic)979-8-3503-6966-3
    DOIs
    Publication statusPublished - Dec 2023
    Event2023 Winter Simulation Conference, WSC 2023 - San Antonio, United States
    Duration: 10 Dec 202313 Dec 2023

    Publication series

    NameProceedings - Winter Simulation Conference
    ISSN (Print)0891-7736

    Conference

    Conference2023 Winter Simulation Conference, WSC 2023
    PlaceUnited States
    CitySan Antonio
    Period10/12/2313/12/23

    Funding

    This paper was supported by NSFC/RGC Joint Research Scheme under project N_CityU105/21, National Natural Science Foundation of China (61972261), Natural Science Foundation of Guangdong Province (2023A1515011667), Key Basic Research Foundation of Shenzhen (JCYJ20220818100205012), Shenzhen Science and Technology Program (RCBS20221008093331068), and Basic Research Foundation of Shenzhen (JCYJ20210324093609026).

    RGC Funding Information

    • RGC-funded

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