Estimation of Panel Data Models with Parameter Heterogeneity when Group Membership is Unknown

Q3 Mathematics
Chang‐Ching Lin, Serena Ng
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引用次数: 120

Abstract

Abstract This paper proposes two methods for estimating panel data models with group specific parameters when group membership is not known. The first method uses the individual level time series estimates of the parameters to form threshold variables. The problem of parameter heterogeneity is turned into estimation of a panel threshold model with an unknown threshold value. The second method modifies the K-means algorithm to perform conditional clustering. Units are clustered based on the deviations between the individual and the group conditional means. The two approaches are used to analyze growth across countries and housing market dynamics across the states in the U.S.
群体隶属未知时参数异质性面板数据模型的估计
摘要:本文提出了两种估计具有特定参数的群体数据模型的方法。第一种方法使用参数的个体水平时间序列估计来形成阈值变量。将参数异质性问题转化为阈值未知的面板阈值模型的估计问题。第二种方法是修改K-means算法来执行条件聚类。根据个体和群体条件均值之间的偏差对单元进行聚类。这两种方法被用来分析各国的增长和美国各州的房地产市场动态
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来源期刊
Journal of Econometric Methods
Journal of Econometric Methods Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
2.20
自引率
0.00%
发文量
7
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