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首页> 外文期刊>Bernoulli: official journal of the Bernoulli Society for Mathematical Statistics and Probability >Estimation and testing in a partial linear regression model under long-memory dependence
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Estimation and testing in a partial linear regression model under long-memory dependence

机译:长记忆依赖下的部分线性回归模型的估计和检验

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摘要

We discuss estimation and testing of hypotheses in a partial linear regression model, that is, a regression model where the regression function is the sum of a linear and a nonparametric component. We focus on the case where the covariables and the random noise do not necessarily have summable autocovariance functions, and the estimators and test statistics are based on kernel smoothing. We obtain the bias, variance and asymptotic distribution of both estimators for the parametric and nonparametric parts, as well as the asymptotic distributions of the statistics used, both under the null hypothesis and local alternatives. We thus generalize the results of Speckman and of Beran and Ghosh to the case of general structures for the autocovariance function and complete the results of Gonzalez-Manteiga and Vilar-Fernandez to the case of a partial linear regression model. Simulations and a real data example provide promising results for our tests.
机译:我们讨论了部分线性回归模型(即回归模型,其中回归函数是线性和非参数分量之和)中假设的估计和检验。我们关注协变量和随机噪声不一定具有可加自协方差函数,并且估计量和检验统计量基于核平滑的情况。我们在原假设和局部替代条件下,获得了参数和非参数部分的两个估计量的偏差,方差和渐近分布,以及所用统计量的渐近分布。因此,我们将Speckman和Beran和Ghosh的结果推广到自协方差函数的一般结构的情况下,并将Gonzalez-Manteiga和Vilar-Fernandez的结果推广到部分线性回归模型的情况。仿真和真实数据示例为我们的测试提供了可喜的结果。

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