4.5 Article

Modification of the Maximin and φp (Phi) Criteria to Achieve Statistically Uniform Distribution of Sampling Points

期刊

TECHNOMETRICS
卷 62, 期 3, 页码 371-386

出版社

TAYLOR & FRANCIS INC
DOI: 10.1080/00401706.2019.1639550

关键词

Design of experiments for computer models; Latin hypercube sampling; Periodic metric; Space-filling designs; Uniform design; Variance reduction

资金

  1. Czech Science Foundation [16-22230S]

向作者/读者索取更多资源

This article proposes a sampling technique that delivers robust designs, that is, point sets selected from a design domain in the shape of a unit hypercube. The designs are guaranteed to provide a statistically uniform point distribution, meaning that every location has the same probability of being selected. Moreover, the designs are sample uniform, meaning that each individual design has its points spread evenly throughout the domain. The sample uniformity (often measured via a discrepancy criterion) is achieved using distance-based criteria ( or Maximin), that is, criteria normally used in space-filling designs. We show that the standard intersite metrics employed in distance-based criteria (Maximin and (phi)) do not deliver statistically uniform designs. Similarly, designs optimized via centered L-2 discrepancy or support points are also not statistically uniform. When these designs (after optimization based on intersite distances) are used for Monte Carlo type of integration, their statistical nonuniformity is a serious problem as it may lead to a systematic bias. This article proposes using a periodic metric to guarantee the statistical uniformity of the family of distance-based designs. The presented designs used as benchmarks in the article are only taken from the class of Latin hypercube designs, which forces univariate projections to be uniform and improves accuracy in Monte Carlo integration of some functions. for this article are available online.

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