数学
半参数模型
半参数回归
渐近分布
估计员
参数统计
似然比检验
应用数学
估计方程
统计推断
检验统计量
统计假设检验
参数化模型
统计
作者
Jianqing Fan,Tao Huang
出处
期刊:Bernoulli
[Bernoulli Society for Mathematical Statistics and Probability]
日期:2005-12-01
卷期号:11 (6)
被引量:665
标识
DOI:10.3150/bj/1137421639
摘要
Varying-coefficient partially linear models are frequently used in statistical modelling, but their estimation and inference have not been systematically studied. This paper proposes a profile least-squares technique for estimating the parametric component and studies the asymptotic normality of the profile least-squares estimator. The main focus is the examination of whether the generalized likelihood technique developed by Fan et al. is applicable to the testing problem for the parametric component of semiparametric models. We introduce the profile likelihood ratio test and demonstrate that it follows an asymptotically χ<sup>2</sup> distribution under the null hypothesis. This not only unveils a new Wilks type of phenomenon, but also provides a simple and useful method for semiparametric inferences. In addition, the Wald statistic for semiparametric models is introduced and demonstrated to possess a sampling property similar to the profile likelihood ratio statistic. A new and simple bandwidth selection technique is proposed for semiparametric inferences on partially linear models and numerical examples are presented to illustrate the proposed methods.
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