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Estimation of common breaks in linear panel data models via screening and ranking algorithm
by
Xiao, Yanting
, Li, Fuxiao
, Chen, Zhanshou
in
639/705/1042
/ 639/705/531
/ Algorithms
/ Data models
/ Economic growth
/ Estimation of break points
/ Generalized method of moments
/ Humanities and Social Sciences
/ Information criterion
/ Linear panel data models
/ Local statistic
/ Monte Carlo simulation
/ multidisciplinary
/ Regression analysis
/ Rural populations
/ Science
/ Science (multidisciplinary)
/ Screening and ranking algorithm
/ Statistics
/ Time series
2025
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Estimation of common breaks in linear panel data models via screening and ranking algorithm
by
Xiao, Yanting
, Li, Fuxiao
, Chen, Zhanshou
in
639/705/1042
/ 639/705/531
/ Algorithms
/ Data models
/ Economic growth
/ Estimation of break points
/ Generalized method of moments
/ Humanities and Social Sciences
/ Information criterion
/ Linear panel data models
/ Local statistic
/ Monte Carlo simulation
/ multidisciplinary
/ Regression analysis
/ Rural populations
/ Science
/ Science (multidisciplinary)
/ Screening and ranking algorithm
/ Statistics
/ Time series
2025
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Do you wish to request the book?
Estimation of common breaks in linear panel data models via screening and ranking algorithm
by
Xiao, Yanting
, Li, Fuxiao
, Chen, Zhanshou
in
639/705/1042
/ 639/705/531
/ Algorithms
/ Data models
/ Economic growth
/ Estimation of break points
/ Generalized method of moments
/ Humanities and Social Sciences
/ Information criterion
/ Linear panel data models
/ Local statistic
/ Monte Carlo simulation
/ multidisciplinary
/ Regression analysis
/ Rural populations
/ Science
/ Science (multidisciplinary)
/ Screening and ranking algorithm
/ Statistics
/ Time series
2025
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Estimation of common breaks in linear panel data models via screening and ranking algorithm
Journal Article
Estimation of common breaks in linear panel data models via screening and ranking algorithm
2025
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Overview
In this paper, we consider the estimation of common breaks for linear panel data models by means of screening and ranking algorithm. For static and dynamic panel data models, we estimate the regression coefficients using covariance estimation and generalized method of moments, respectively, and apply a screening and ranking algorithm on this basis. The possible break points are first screened by constructing local statistics based on the coefficient estimators, then further screened by the thresholding rule, and finally the final break points are screened by the information criterion. Monte Carlo simulations demonstrate that the proposed methods work well in finite samples. We apply the screening and ranking algorithm to study the influence of rural residents’ consumption demand on China’s economic growth using a panel of 31 provinces from 2005 to 2023 and find a break point in the model.
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
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