A note on testing the regression functions via nonparametric smoothing |
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Authors: | Weixing Song Juan Du |
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Affiliation: | Department of Statistics, Manhattan, KS, 66502, USA |
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Abstract: | The authors present a consistent lack‐of‐fit test in nonlinear regression models. The proposed procedure possesses some nice properties of Zheng's test such as the consistency, the ability to detect any local alternatives approaching the null at rates slower than the parametric rate. What's more, for a predetermined kernel function, the proposed test is more powerful than Zheng's test and the validity of these findings is confirmed by the simulation studies and a real data example. In addition, the authors find out a close connection between the choices of normal kernel functions and the bandwidths. The Canadian Journal of Statistics 39: 108–125; 2011 © 2011 Statistical Society of Canada |
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Keywords: | Consistent test convolution kernel estimation lack‐of‐fit test local alternatives Primary 62G08 secondary 62G10 |
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