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Output analysis: simulation output analysis

Published: 08 December 2002 Publication History

Abstract

We discuss methods for statistically analyzing the output from stochastic simulations. Both terminating and steady-state simulations are considered.

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  1. Output analysis: simulation output analysis

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      Published In

      cover image ACM Conferences
      WSC '02: Proceedings of the 34th conference on Winter simulation: exploring new frontiers
      December 2002
      2143 pages
      ISBN:0780376153
      • General Chair:
      • Jane L. Snowdon,
      • Program Chair:
      • John M. Charnes

      Sponsors

      • INFORMS/CS: Institute for Operations Research and the Management Sciences/College on Simulation
      • IIE: Institute of Industrial Engineers
      • ASA: American Statistical Association
      • ACM: Association for Computing Machinery
      • SIGSIM: ACM Special Interest Group on Simulation and Modeling
      • IEEE/CS: Institute of Electrical and Electronics Engineers/Computer Society
      • NIST: National Institute of Standards and Technology
      • (SCS): The Society for Modeling and Simulation International
      • IEEE/SMCS: Institute of Electrical and Electronics Engineers/Systems, Man, and Cybernetics Society

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      Winter Simulation Conference

      Publication History

      Published: 08 December 2002

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      WSC02
      Sponsor:
      • INFORMS/CS
      • IIE
      • ASA
      • ACM
      • SIGSIM
      • IEEE/CS
      • NIST
      • (SCS)
      • IEEE/SMCS
      WSC02: Winter Simulation Conference 2002
      December 8 - 11, 2002
      California, San Diego

      Acceptance Rates

      WSC '02 Paper Acceptance Rate 166 of 185 submissions, 90%;
      Overall Acceptance Rate 3,413 of 5,075 submissions, 67%

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      Cited By

      View all
      • (2012)A new roadmap for next-generation policy-makingProceedings of the 6th International Conference on Theory and Practice of Electronic Governance10.1145/2463728.2463743(62-66)Online publication date: 22-Oct-2012
      • (2008)A queuing network model for the management of berth crane operationsComputers and Operations Research10.1016/j.cor.2006.12.00135:8(2432-2446)Online publication date: 1-Aug-2008
      • (2006)Improving confidence in network simulationsProceedings of the 38th conference on Winter simulation10.5555/1218112.1218509(2188-2194)Online publication date: 3-Dec-2006

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