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首页> 外文期刊>Journal of Econometrics >Testing additivity in generalized nonparametric regression models with estimated parameters
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Testing additivity in generalized nonparametric regression models with estimated parameters

机译:在带有估计参数的广义非参数回归模型中测试加性

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摘要

We develop several kernel-based consistent tests of an hypothesis of additivity in nonparametric regression. We allow for discrete covariates and parameters estimated from a semiparametric GMM criterion function. The additivity hypothesis is of interest because it delivers interpretability and reasonably fast convergence rates for nonparametric estimators. The asymptotic distribution of the parameter estimators are found. We also derive the asymptotic distribution of the additivity test statistics under a sequence of local alternatives. We give a ranking of the different tests based on local asymptotic power. The practical performance is investigated through simulations based on the data set used in Linton and Hardle (1996).
机译:我们针对非参数回归中的可加性假设开发了几种基于核的一致性检验。我们允许从半参数GMM准则函数估计的离散协变量和参数。可加性假设很有趣,因为它为非参数估计量提供了可解释性和相当快的收敛速度。找到参数估计量的渐近分布。我们还导出了一系列局部替代项下可加性检验统计量的渐近分布。我们根据局部渐近能力对不同测试进行排名。通过基于Linton和Hardle(1996)中使用的数据集的仿真来研究实际性能。

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