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ABSTRACT
We critically review the work that has been done in applying basic, smoothed and parametric bootstrap methods to simulation experiments. We develop a framework to classify bootstrap methods in this context and use it to compare various bootstrap schemes. Most bootstrap methods are hard to analyse theoretically. An exception is the parametric case for which a detailed analysis can be carried out. An interesting result in this case is that, whereas in standard statistical experiments bootstrap samples give only information about the variance of a statistic and not its mean, this turns out not to be so in simulation experiments. Thus parametric bootstrap samples can be advantageously included in estimates of the responses of interest.
REFERENCES
Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.
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1
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Banks, D.L. 1989. Improving the Bayesian bootstrap. Unpublished paper. Dept of Pure Mathematics and Mathematical Statistics, Cambridge University.
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2
|
|
| |
3
|
|
| |
4
|
|
| |
5
|
Cheng, R.C.H. and Holland, W. 1995a. The effect of input parameters on the variability of simulation output. In Proceedings of UKSS'95, The Second Conference of the U.K. Simulation Society (ed. R.C.H. Cheng and R.J. Pooley), UK Simulation Society, EUCS Reprographics, Edinburgh Univ., 29- 36.
|
| |
6
|
Cheng, R.C.H. and Holland, W. I995b. The sensitivity of computer simulation experiments to errors in input data. Accepted for SAMO95 International Symposium, Sept. 1995, Belgirate, Italy.
|
| |
7
|
DiCiccio, T.J. and Romano, J.P. 1988. A review of bootstrap confidence intervals. J. R. Statist. ~ooc. B, 50, 338-354.
|
| |
8
|
Efron, B. 1982. The jackknife, the bootstrap and other resampling plans. Volume 38 of CBMS-NSF Regional Conference Series in Applied Mathematics. SIAM.
|
| |
9
|
Efron, B. and Tibshirani, R.J. 1993. An Introduction to the Bootstrap. New York and London: Chapman and Hall.
|
| |
10
|
Hinkley D.J. 1988. Bootstrap methods. J. R. S~a~ist. Soc. B, 50, 321-337.
|
| |
11
|
Kim, Y. B., Haddock, J. and Willemain, T. R. 1993a. The binary bootstrap: inference with correlated data. Commun. oCtatist.-Szmula., 22, 205-216.
|
 |
12
|
Y. B. Kim , T. R. Willemain , J. Haddock , G. C. Runger, The threshold bootstrap: a new approach to simulation output analysis, Proceedings of the 25th conference on Winter simulation, p.498-502, December 12-15, 1993, Los Angeles, California, United States
[doi> 10.1145/256563.256697]
|
| |
13
|
|
| |
14
|
Rubin, D.B. 1981. The Bayesian bootstrap. Ann. Statist. 9, 130-134.
|
| |
15
|
Shiue, W.-K., Xu, C.-W. and Rea, C.B. 1993. Bootstrap confidence intervals for simulation outputs. J. Statzst. Compu~. Simul., 45, 249-255.
|
| |
16
|
Shanker, A. and KeIton, W. D. 1994. Measuring output error due to input error in simulation: analysis of fitted vs. mixed empirical distributions for queues. To appear.
|
| |
17
|
Silverman, B.W. and Young, G.A. 1987. The bootstrap: to smooth or not to smooth? Biome~rika, 74, 469-479.
|
| |
18
|
Young, G.A. 1990. Alternative smoothed bootstraps. j.R. Sta~s~. Soc. B, 52,477-484.
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19
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CITED BY 9
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Jack P. C. Kleijnen , Ad J. Feelders , Russell C. H. Cheng, Bootstrapping and validation of metamodels in simulation, Proceedings of the 30th conference on Winter simulation, p.701-705, December 13-16, 1998, Washington, D.C., United States
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Shamsnaz Virani , Letha Etzkorn , Sampson Gholston , Phillip Farrington , Dawn Utley , Julie Fortune, Investigation of domain effects on software, Proceedings of the 47th Annual Southeast Regional Conference, March 19-21, 2009, Clemson, South Carolina
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