Data analysis for accelerated life tests via Weibull-gamma frailty regression models |
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Authors: | Xiao-Dong Zhou Yun-Juan Wang Lin Wu Rong-Xian Yue |
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Affiliation: | 1. School of Statistics and Information, Shanghai University of International Business and Economics, Shanghai, China;2. School of Statistics and Mathematics, Shanghai Lixin, University of Accounting and Finance, Shanghai, China;3. College of Mathematics and Science, Shanghai Normal University, Shanghai, China |
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Abstract: | In this article, we study data analysis methods for accelerated life test (ALT) with blocking. Unlike the previous assumption of normal distribution for random block effects, we advocate the use of Weibull regression model with gamma random effects for making statistical inference of ALT data. To estimate the unknown parameters in the proposed model, maximum likelihood estimation and Bayesian estimation methods are provided. We illustrate the proposed methods using real data examples and simulation examples. Numerical results suggest that distribution of random effects has minimal impact on the estimation of fixed effects in the Weibull regression models. Furthermore, to demonstrate the advantage of our proposed model, we also provide methods to compare ALT plans and thus identify the optimal ALT plans. |
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Keywords: | accelerated life test Bayesian maximum likelihood estimation optimal design Weibull-gamma frailty regression model |
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