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首页> 外文期刊>Journal of Econometrics >Continuous record Laplace-based inference about the break date in structural change models
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Continuous record Laplace-based inference about the break date in structural change models

机译:连续记录基于Laplace的推断关于结构变化模型中断日期

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Building upon the continuous record asymptotic framework recently introduced by Casini and Perron (2020a) for inference in structural change models, we propose a Laplace-based (Quasi-Bayes) procedure for the construction of the estimate and confidence set for the date of a structural change. It is defined by an integration rather than an optimization-based method. A transformation of the least-squares criterion function is evaluated in order to derive a proper distribution, referred to as the Quasi-posterior. For a given choice of a loss function, the Laplace-type estimator is the minimizer of the expected risk with the expectation taken under the Quasi-posterior. Besides providing an alternative estimate that is more precise-lower mean absolute error (MAE) and lower root-mean squared error (RMSE)-than the usual least-squares one, the Quasi-posterior distribution can be used to construct asymptotically valid inference using the concept of Highest Density Region. The resulting Laplace-based inferential procedure is shown to have lower MAE and RMSE, and the confidence sets strike a better balance between empirical coverage rates and average lengths of the confidence sets relative to traditional long-span methods, whether the break size is small or large. (C) 2020 Elsevier B.V. All rights reserved.
机译:基于Casini和Perron(2020a)最近引入的用于结构变化模型推断的连续记录渐近框架,我们提出了一种基于拉普拉斯(准贝叶斯)的程序,用于构造结构变化日期的估计和置信集。它是通过集成而不是基于优化的方法来定义的。对最小二乘准则函数的变换进行评估,以得出适当的分布,称为准后验分布。对于给定的损失函数选择,拉普拉斯型估计是期望风险的最小值,期望值在拟后验概率下。除了提供比通常的最小二乘估计更精确的低平均绝对误差(MAE)和低均方根误差(RMSE)的替代估计外,准后验分布还可用于利用最高密度区域的概念构造渐近有效的推理。结果表明,基于拉普拉斯的推理程序具有较低的MAE和RMSE,并且置信集在经验覆盖率和相对于传统大跨度方法的置信集平均长度之间取得了更好的平衡,无论中断大小是小还是大。(C) 2020爱思唯尔B.V.版权所有。

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