C. Devon Lin
Queen's University
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Publication
Featured researches published by C. Devon Lin.
Quality and Reliability Engineering International | 2015
C. Devon Lin; Christine M. Anderson-Cook; Michael S. Hamada; Leslie M. Moore; Randy R. Sitter
Genetic algorithms (GAs) have been used in many disciplines to optimize solutions for a broad range of problems. In the last 20 years, the statistical literature has seen an increase in the use and study of this optimization algorithm for generating optimal designs in a diverse set of experimental settings. These efforts are due in part to an interest in implementing a novel methodology as well as the hope that careful application of elements of the GA framework to the unique aspects of a designed experiment problem might lead to an efficient means of finding improved or optimal designs. In this paper, we explore the merits of using this approach, some of the aspects of design that make it a unique application relative to other optimization scenarios, and discuss elements which should be considered for an effective implementation. We conclude that the current GA implementations can, but do not always, provide a competitive methodology to produce substantial gains over standard optimal design strategies. We consider both the probability of finding a globally optimal design as well as the computational efficiency of this approach. Copyright
Technometrics | 2017
Xinwei Deng; C. Devon Lin; K.-W. Liu; R. K. Rowe
ABSTRACT Computer experiments with qualitative and quantitative factors occur frequently in various applications in science and engineering. Analysis of such experiments is not yet completely resolved. In this work, we propose an additive Gaussian process model for computer experiments with qualitative and quantitative factors. The proposed method considers an additive correlation structure for qualitative factors, and assumes that the correlation function for each qualitative factor and the correlation function of quantitative factors are multiplicative. It inherits the flexibility of unrestrictive correlation structure for qualitative factors by using the hypersphere decomposition, embracing more flexibility in modeling the complex systems of computer experiments. The merits of the proposed method are illustrated by several numerical examples and a real data application. Supplementary materials for this article are available online.
Biometrika | 2009
C. Devon Lin; Rahul Mukerjee; Boxin Tang
Annals of Statistics | 2010
C. Devon Lin; Derek Bingham; Randy R. Sitter; Boxin Tang
Journal of Statistical Planning and Inference | 2008
C. Devon Lin; Randy R. Sitter
Journal of Statistical Planning and Inference | 2008
C. Devon Lin; Arden Miller; Randy R. Sitter
Statistica Sinica | 2015
Xinwei Deng; Ying Hung; C. Devon Lin
Biometrika | 2012
C. Devon Lin
Canadian Journal of Statistics-revue Canadienne De Statistique | 2013
C. Devon Lin; Wilson W. Lu; Keith F. Rust; Randy R. Sitter
Journal of Statistical Planning and Inference | 2012
C. Devon Lin; Randy R. Sitter; Boxin Tang