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Detecting change point in linear regression using jackknife empirical likelihood

机译:使用折刀经验似然法检测线性回归中的变化点

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Data generated in quite a few examples can be described using a linear regression model with a change point. In this paper for such a model, we develop a nonparametric method based on the jackknife empirical likelihood (JEL) to detect the change in regression coefficients. Under mild conditions, we show that the null distribution of the JEL ratio test statistic is asymptotically Gumbel. The test and the estimator of change point are shown to be consistent under the alternative hypothesis. Simulation suggests that the proposed method is computationally much more affordable than the alternative based on empirical likelihood. We also demonstrate the proposed method using two real datasets.
机译:可以使用带有变化点的线性回归模型来描述很多示例中生成的数据。在本文中,对于这种模型,我们开发了一种基于折刀经验似然(JEL)的非参数方法来检测回归系数的变化。在温和的条件下,我们表明JEL比检验统计量的零分布是渐近Gumbel的。在替代假设下,检验和变化点估计量是一致的。仿真表明,与基于经验似然的替代方法相比,该方法在计算上更实惠。我们还演示了使用两个真实数据集的建议方法。

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