This article was supported by the Open Access Publication Fund of Humboldt-Universität zu Berlin.Dynamic panel models are a popular approach to study interrelationships between repeatedly measured variables. Often, dynamic panel models are specified and estimated within a structural equation modeling (SEM) framework. An endemic problem threatening the validity of such models is unmodelled heterogeneity. Recently, individual parameter contribution (IPC) regression was proposed as a flexible method to study heterogeneity in SEM parameters as a function of observed covariates. In the present paper, we derive how IPCs can be calculated for general maximum likelihood estimates and evaluate the performance of IPC regression to estimate group diff...
Title from PDF of title page (University of Missouri--Columbia, viewed on November 18, 2010).The ent...
Individuals may differ in their parameter values. This article discusses a three-step method of stud...
The paper develops a computational method implementing a standard Dynamic Panel Data model with Gene...
This article was supported by the Open Access Publication Fund of Humboldt-Universität zu Berlin.Dyn...
Unmodeled differences between individuals or groups can bias parameter estimates and may lead to fal...
Recently, the large T panel literature has emphasized unobserved, time-varying heterogeneity that ma...
This paper provides a review of linear panel data models with slope heterogeneity, introduces variou...
The main purpose of this paper is to estimate panel data models with endogenous regressors and nonad...
This paper studies dynamic panel data linear models that allow multiplicative and additive heterogen...
We propose a semi-parametric approach to heterogeneous dynamic panel data modelling. The method gene...
Citation: Nathan P. Hendricks & Aaron Smith (2015) Grouped coefficients to reduce bias in heterogene...
†I am deeply grateful to Taku Yamamoto, Katsuto Tanaka, Satoru Kanoh and seminar participants at Hit...
This paper is a revised version of chapter three of my Ph.D dissertation submitted to Hitotsubashi U...
I discuss the fixed-effect estimation of panel data models with time-varying excess heterogeneity ac...
This paper shows nonparametric identification of dynamic panel data models with nonseparable heterog...
Title from PDF of title page (University of Missouri--Columbia, viewed on November 18, 2010).The ent...
Individuals may differ in their parameter values. This article discusses a three-step method of stud...
The paper develops a computational method implementing a standard Dynamic Panel Data model with Gene...
This article was supported by the Open Access Publication Fund of Humboldt-Universität zu Berlin.Dyn...
Unmodeled differences between individuals or groups can bias parameter estimates and may lead to fal...
Recently, the large T panel literature has emphasized unobserved, time-varying heterogeneity that ma...
This paper provides a review of linear panel data models with slope heterogeneity, introduces variou...
The main purpose of this paper is to estimate panel data models with endogenous regressors and nonad...
This paper studies dynamic panel data linear models that allow multiplicative and additive heterogen...
We propose a semi-parametric approach to heterogeneous dynamic panel data modelling. The method gene...
Citation: Nathan P. Hendricks & Aaron Smith (2015) Grouped coefficients to reduce bias in heterogene...
†I am deeply grateful to Taku Yamamoto, Katsuto Tanaka, Satoru Kanoh and seminar participants at Hit...
This paper is a revised version of chapter three of my Ph.D dissertation submitted to Hitotsubashi U...
I discuss the fixed-effect estimation of panel data models with time-varying excess heterogeneity ac...
This paper shows nonparametric identification of dynamic panel data models with nonseparable heterog...
Title from PDF of title page (University of Missouri--Columbia, viewed on November 18, 2010).The ent...
Individuals may differ in their parameter values. This article discusses a three-step method of stud...
The paper develops a computational method implementing a standard Dynamic Panel Data model with Gene...