变系数空间自回归模型的模型选择

IF 1.5 4区 经济学 Q2 ECONOMICS Frontiers of Economics in China Pub Date : 2019-01-03 DOI:10.3868/S060-007-018-0026-2
Hongjie Wei, Yan Sun, M. Hu
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引用次数: 4

摘要

在实证研究中,变系数空间自回归(SAR)模型可用于捕获协变量影响的异质性效应以及空间相互作用,而许多流行的模型可视为其特例,如线性SAR模型。在本研究中,我们将针对变系数SAR模型提出一种统一的模型选择方法,以同时实现两个目标:(1)变量选择(消除不相关的协变量)和(2)识别相关协变量中具有恒定效应的协变量。为此,我们遵循组LASSO的思想,结合两个惩罚函数同时进行模型选择和估计。蒙特卡罗实验表明,该方法在有限样本下具有良好的性能。最后,通过对中国城市住房数据的分析,说明了该方法的有效性。
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Model Selection in Spatial Autoregressive Models with Varying Coefficients
Spatial autoregressive (SAR) models with varying coefficients are useful for capturing heterogeneous effects of the impacts of covariates as well as spatial interaction in empirical studies, and a wide range of popular models can be seen as its special cases, such as linear SAR models. In this study, we will propose a unified model selection method for the SAR model with varying coefficients to achieve two targets simultaneously: (1) variable selection (eliminate irrelevant covariates), and (2) identification of the covariates with constant effect among the relevant covariates. To do so, we follow the idea of group LASSO to incorporate two penalty functions to simultaneously do model selection and estimation. Monte Carlo experiments show that the proposed method performs well in finite samples. Finally, we illustrate the method with an application to the housing data of Chinese cities.
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来源期刊
CiteScore
1.20
自引率
0.00%
发文量
373
期刊介绍: Frontiers of Economics in China seeks to provide a forum for a broad blend of peer-reviewed academic papers of economics in order to promote communication and exchanges between economists in China and abroad. It will reflect the enormous advances that are currently being made in China in the field of economy and society. In addition, this journal also bears the mission of introducing the academic achievements on Chinese economics research to the world.
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