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Generalized likelihood ratio tests for the structure of semiparametric additive models
Authors:Jiancheng Jiang  Haibo Zhou  Xuejun Jiang  Jianan Peng
Institution:1. Department of Mathematics and Statistics University of North Carolina, Charlotte, NC 28223, USA;2. Department of Biostatistics University of North Carolina, Chapel Hill, NC 27599, USA;3. Department of Statistics The Chinese University of Hong Kong, Hong Kong, China;4. Department of Mathematics and Statistics Acadia University, Wolfville, Nova Scotia, Canada B4P 2R6
Abstract:Semiparametric additive models (SAMs) are very useful in multivariate nonparametric regression. In this paper, the authors study nonparametric testing problems for the nonparametric components of SAMs. Using the backfitting algorithm and the local polynomial smoothing technique, they extend to SAMs the generalized likelihood ratio tests of Fan &Jiang (2005). The authors show that the proposed tests possess the Wilks‐type property and that they can detect alternatives nearing the null hypothesis with a rate arbitrarily close to root‐n while error distributions are unspecified. They report simulations which demonstrate the Wilks phenomenon and the powers of their tests. They illustrate the performance of their approach by simulation and using the Boston housing data set.
Keywords:Backfitting algorithm  generalized likelihood ratio  local polynomial regression  Wilks phenomenon
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