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Multiple Testing in Regression Models With Applications to Fault Diagnosis in the Big Data Era
Authors:Ching-Kang Ing  Tze Leung Lai  Milan Shen  KaWai Tsang  Shu-Hui Yu
Affiliation:1. Institute of Statistical Science, Academia Sinica, Taipei, Taiwan;2. Department of Statistics, Stanford University, Stanford, California;3. Institute of Statistics, National Kaohsiung University, Kaohsiung, Taiwan
Abstract:Motivated by applications to root-cause identification of faults in multistage manufacturing processes that involve a large number of tools or equipment at each stage, we consider multiple testing in regression models whose outputs represent the quality characteristics of a multistage manufacturing process. Because of the large number of input variables that correspond to the tools or equipments used, this falls in the framework of regression modeling in the modern era of big data. On the other hand, with quick fault detection and diagnosis followed by tool rectification, sparsity can be assumed in the regression model. We introduce a new approach to address the multiple testing problem and demonstrate its advantages over existing methods. We also illustrate its performance in an application to semiconductor wafer fabrication that motivated this development. Supplementary materials for this article are available online.
Keywords:Backward elimination  Family-wise error rate  Fault detection and diagnosis  Lasso  Multistage manufacturing process  Orthogonal greedy algorithm  Sparsity  Wafer fabrication
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