Assessing additivity in nonparametric models —A kernel‐based method |
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Authors: | Xiaoming Wang Keumhee C. Carriere |
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Affiliation: | 1. School of Statistics and Management, Shanghai University of Finance and Economics, Shanghai 200433, China;2. Department of Mathematical and Statistical Sciences, University of Alberta, Edmonton, AB, Canada T6G 2G1 |
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Abstract: | ![]() In this article, we address the testing problem for additivity in nonparametric regression models. We develop a kernel‐based consistent test of a hypothesis of additivity in nonparametric regression, and establish its asymptotic distribution under a sequence of local alternatives. Compared to other existing kernel‐based tests, the proposed test is shown to effectively ameliorate the influence from estimation bias of the additive component of the nonparametric regression, and hence increase its efficiency. Most importantly, it avoids the tuning difficulties by using estimation‐based optimal criteria, while there is no direct tuning strategy for other existing kernel‐based testing methods. We discuss the usage of the new test and give numerical examples to demonstrate the practical performance of the test. The Canadian Journal of Statistics 39: 632–655; 2011. © 2011 Statistical Society of Canada |
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Keywords: | Additivity testing kernel estimation nonparametric model wild bootstrap MSC 2010: Primary 62G10 secondary 62G20 62G09 |
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