RESEARCH ARTICLE

A new class of Latin hypercube designs with high-dimensional hidden projective uniformity

  • Yuanzhen HE ,
  • Mingyao AI
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  • LMAM, School of Mathematical Sciences and Center for Statistical Science, Peking University, Beijing 100871, China

Received date: 17 Oct 2010

Accepted date: 15 Feb 2011

Published date: 01 Dec 2011

Copyright

2014 Higher Education Press and Springer-Verlag Berlin Heidelberg

Abstract

Latin hypercube design is a good choice for computer experiments. In this paper, we construct a new class of Latin hypercube designs with some high-dimensional hidden projective uniformity. The construction is based on a new class of orthogonal arrays of strength two which contain higher strength orthogonal arrays after their levels are collapsed. As a result, the obtained Latin hypercube designs achieve higher-dimensional uniformity when projected onto the columns corresponding to higher strength orthogonal arrays, as well as twodimensional projective uniformity. Simulation study shows that the constructed Latin hypercube designs are significantly superior to the currently used designs in terms of the times of correctly identifying the significant effects.

Cite this article

Yuanzhen HE , Mingyao AI . A new class of Latin hypercube designs with high-dimensional hidden projective uniformity[J]. Frontiers of Mathematics in China, 2011 , 6(6) : 1085 -1093 . DOI: 10.1007/s11464-011-0119-8

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