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A comparison of estimators for regression models with change points

机译:具有变化点的回归模型的估计量比较

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摘要

We consider two problems concerning locating change points in a linear regression model. One involves jump discontinuities (change-point) in a regression model and the other involves regression lines connected at unknown points. We compare four methods for estimating single or multiple change points in a regression model, when both the error variance and regression coefficients change simultaneously at the unknown point(s): Bayesian, Julious, grid search, and the segmented methods. The proposed methods are evaluated via a simulation study and compared via some standard measures of estimation bias and precision. Finally, the methods are illustrated and compared using three real data sets. The simulation and empirical results overall favor both the segmented and Bayesian methods of estimation, which simultaneously estimate the change point and the other model parameters, though only the Bayesian method is able to handle both continuous and dis-continuous change point problems successfully. If it is known that regression lines are continuous then the segmented method ranked first among methods.
机译:我们考虑两个有关在线性回归模型中定位变化点的问题。一个涉及回归模型中的跳跃间断点(变化点),另一个涉及在未知点处连接的回归线。当误差方差和回归系数在未知点处同时变化时,我们比较了四种用于估计回归模型中单个或多个变化点的方法:贝叶斯,朱利叶斯,网格搜索和分段方法。通过仿真研究评估提出的方法,并通过一些估计偏差和精度的标准方法进行比较。最后,使用三个真实数据集对方法进行了说明和比较。尽管只有贝叶斯方法能够成功处理连续和不连续的变化点问题,但是仿真和经验结果总体上都支持分段和贝叶斯估计方法,它们可以同时估计变化点和其他模型参数。如果已知回归线是连续的,则分段方法在方法中排名第一。

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