No CrossRef data available.
Article contents
USING EXCURSIONS TO ANALYZE SIMULATION OUTPUT
Published online by Cambridge University Press: 18 March 2010
Abstract
We consider the steady-state simulation output analysis problem for a process that satisfies a functional central limit theorem. We construct an estimator for the time-average variance constant that is based on excursions of a process above the minimum. The resulting estimator does not require a fixed run length, and the memory requirement can be dynamically bounded. Standardized time series methods based on excursions are also described.
- Type
- Research Article
- Information
- Probability in the Engineering and Informational Sciences , Volume 24 , Issue 2 , April 2010 , pp. 201 - 218
- Copyright
- Copyright © Cambridge University Press 2010
References
2.Calvin, J. (1995). Average performance of passive algorithms for global optimization. Journal of Mathematical Analysis and Applications 191: 608–617.CrossRefGoogle Scholar
3.Calvin, J.M. (2004) Simulation output analysis based on excursions. In Ingalls, R.G., Rosetti, M.D., Smith, J.S. & Peters, B.A., (eds.) Proceedings of the 2004 winter simulation conference. (Piscataway, NJ), Institute of Electrical and Electronics Engineers, pp. 681–684.Google Scholar
4.Chien, C., Goldsman, D. & Melamed, B. (1997). Large-sample results for batch means. Management Science 43: 1288–1295.CrossRefGoogle Scholar
5.Chung, K.L. (1976). Excursions in Brownian motion. Arkiv för Matematik 14: 155–177.CrossRefGoogle Scholar
6.Futschik, A. & Pflug, G. (1997). Optimal allocation of simulation experiments in discrete stochastic optimization and approximative algorithms. European Journal of Operational Research 101: 245–260.CrossRefGoogle Scholar
7.Glynn, P.W. & Iglehart, D.L. (1990). Simulation output analysis using standardized time series. Mathematics of Operations Research 14: 1–16.CrossRefGoogle Scholar
8.Goldsman, D. & Schmeiser, B.W. (1997). Computational efficiency of batching methods. In Andradóttir, S., Healy, K.J., Withers, D.H. & Nelson, B.L., (eds.) Proceedings of the 1997 winter simulation conference. Piscataway, NJ: Institute of Electrical and Electronics Engineers, pp. 202–207.Google Scholar
9.Karatzas, I. & Shreve, S.E. (2000). Brownian motion and stochastic calculus, 2nd ed.New York: Springer-Verlag.Google Scholar
10.Kim, S.-H. & Nelson, B.L. (2006). On the asymptotic validity of fully sequential selection procedures for steady-state simulation. Operations Research 54: 475–488.CrossRefGoogle Scholar
11.Meketon, M.S. & Schmeiser, B.W. (1984). Overlapping batch means: Something for nothing? In Sheppard, S., Pooch, U. & Pegden, D. (eds.) Proceedings of the 1984 winter simulation conference. Piscataway, NJ: Institute of Electrical and Electronics Engineers, pp. 227–230.Google Scholar
12.Revuz, D. & Yor, M. (1994). Continuous martingales and brownian motion. Berlin: Springer-Verlag.Google Scholar
13.Rogers, L.C.G. & Williams, D. (1994). Diffusions, Markov processes and martingales: Vol. 1: Foundations. Cambridge: Cambridge University Press.Google Scholar
14.Schruben, L.W. (1983). Confidence interval estimation using standardized time series. Operations Research, Volume 31, pp. 1090–1108.CrossRefGoogle Scholar
15.Vervaat, W. (1979). A relation between Brownian bridge and Brownian excursion. Annals of Probability, Volume 7, pp. 141–149.CrossRefGoogle Scholar
16.Yeh, Y. & Schmeiser, B.W. (2000). Simulation output analysis via dynamic batch means. In Joines, J.A., Barton, R.R., Kang, K. & Fishwick, P.A., (eds.) Proceedings of the 2000 winter simulation conference. Piscataway, NJ: Institute of Electrical and Electronics Engineers, pp. 637–645.Google Scholar