Structural breaks in seemingly unrelated regression models

IF 0.7 4区 经济学 Q3 ECONOMICS
Shahnaz Parsaeian
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引用次数: 0

Abstract

This paper develops an efficient Stein-like shrinkage estimator for estimating slope parameters under structural breaks in seemingly unrelated regression models, which is then used for forecasting. The proposed method is a weighted average of two estimators: a restricted estimator that estimates the parameters under the restriction of no break in the coefficients, and an unrestricted estimator that considers break points and estimates the parameters using the observations within each regime. It is established that the asymptotic risk of the Stein-like shrinkage estimator is smaller than that of the unrestricted estimator, which is the method typically used to estimate the slope coefficients under structural breaks. Furthermore, this paper proposes an averaging minimal mean squared error estimator in which the averaging weight is derived by minimizing its asymptotic risk. Insights from the theoretical analysis are demonstrated in Monte Carlo simulations and through an empirical example of forecasting output growth of G7 countries.
在看似不相关的回归模型中出现结构性断裂
本文提出了一种有效的Stein样收缩估计器,用于估计看似不相关的回归模型中结构断裂下的边坡参数,然后用于预测。所提出的方法是两个估计量的加权平均:一个是在系数不间断的限制下估计参数的受限估计量,另一个是考虑断点并使用每个状态下的观测值估计参数的非限制估计量。建立了类Stein收缩估计量的渐近风险小于无限制估计量的渐进风险,无限制估计是在结构破坏下估计边坡系数的常用方法。此外,本文提出了一种平均最小均方误差估计器,其中通过最小化其渐近风险来导出平均权重。蒙特卡洛模拟和G7国家产出增长预测的实证例子展示了理论分析的见解。
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来源期刊
CiteScore
2.10
自引率
11.10%
发文量
59
期刊介绍: Macroeconomic Dynamics publishes theoretical, empirical or quantitative research of the highest standard. Papers are welcomed from all areas of macroeconomics and from all parts of the world. Major advances in macroeconomics without immediate policy applications will also be accepted, if they show potential for application in the future. Occasional book reviews, announcements, conference proceedings, special issues, interviews, dialogues, and surveys are also published.
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