DocumentCode
3002355
Title
Does more uniformly distributed sampling generally lead to more accurate prediction in computer experiments?
Author
Liu, Longjun ; Wakeland, Wayne
Author_Institution
Gunderson Inc., Portland, OR
fYear
2005
fDate
4-4 Dec. 2005
Abstract
Sampling uniformity is one of the central issues for computer experiments or metamodeling. Is it generally true that more uniformly distributed sampling leads to more accurate prediction? A study was conducted to compare four designs for computer experiments, based on simulation tests and statistical analysis. Maximin Latin hypercube design (LHMm) nearly always generated more uniform sampling in two- and three- dimensional cases than does random sampling (Rd), Latin hypercube design (LHD), or Minimized centered L2 discrepancy Latin hypercube design (LHCL2). But often there was no significant difference among the means of the prediction errors by employing LHMm versus the other designs. Occasionally, even the opposite was seen. More uniform sampling did not generally lead to more accurate prediction unless sampling included extremely nonuniform cases, especially when the sample size was relatively small
Keywords
error analysis; sampling methods; simulation; computer experiments; distributed sampling; maximin Latin hypercube design; metamodeling; minimized centered L2 discrepancy; prediction errors; random sampling; simulation tests; statistical analysis; Analytical models; Computational modeling; Computer simulation; Design for experiments; Distributed computing; Hypercubes; Metamodeling; Sampling methods; Statistical analysis; Testing;
fLanguage
English
Publisher
ieee
Conference_Titel
Simulation Conference, 2005 Proceedings of the Winter
Conference_Location
Orlando, FL
Print_ISBN
0-7803-9519-0
Type
conf
DOI
10.1109/WSC.2005.1574552
Filename
1574552
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