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Activity Number: 167 - Data Mining and Econometrics
Type: Contributed
Date/Time: Tuesday, August 10, 2021 : 10:00 AM to 11:50 AM
Sponsor: Business and Economic Statistics Section
Abstract #317983
Title: Structural Breaks in Seemingly Unrelated Regression Models
Author(s): Shahnaz Parsaeian*
Companies: University of Kansas
Keywords: Forecasting; Structural breaks; Optimal weights; Stein-like shrinkage estimator; Minimal mean squared error estimator
Abstract:

This paper develops an efficient Stein-like shrinkage estimator for estimating the slope parameters under structural breaks in seemingly unrelated regression models, which then is used for forecasting. The proposed method is a weighted average of two estimators: a restricted estimator which estimates the parameters under the restriction of no break in the coefficients, and an unrestricted estimator which 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 common method for estimating the slope coefficients under structural breaks. Furthermore, this paper proposes an averaging minimal mean squared error estimator where the averaging weight is derived by minimizing its asymptotic risk. The superiority of the two proposed estimators over the unrestricted estimator in terms of the mean squared forecast errors are derived. Besides, analytical comparison between the asymptotic risks of the proposed estimators is provided. Insights from the theoretical analysis are demonstrated in Monte Carlo simulation.


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