This article considers random coefficient models (RCMs) for time-series–cross-section data. These models allow for unit to unit variation in the model parameters. The heart of the article compares the finite sample properties of the fully pooled estimator, the unit by unit (unpooled) estimator, and the (maximum likelihood) RCM estimator. The maximum likelihood estimator RCM performs well, even where the data were generated so that the RCM would be problematic. In an appendix, we show that the most common feasible generalized least squares estimator of the RCM models is always inferior to the maximum likelihood estimator, and in smaller samples dramatically so
This article challenges Fixed Effects (FE) modelling as the ‘default’ for time-series-cross-sectiona...
This paper studies the asymptotics of the Weighted Least Squares (WLS) estimator of the autoregressi...
his paper examines the panel data models when the regression coefficients are fixed, random, and mix...
This article considers random coefficient models (RCMs) for time-series–cross-section data. These mo...
This paper considers random coefficient models (RCMs) for time-series–cross-section data. These mode...
This paper considers random coefficient models (RCMs) for time-series–cross-section data. These mode...
This article considers random coefficient models (RCMs) for time-series-cross-section data. These mo...
A particularly useful approach for analyzing pooled cross sectional and time series data is Swamy's ...
This paper examines the panel data models when the regression coefficients are fixed, random, and mi...
Several models are available for the analysis of pooled time-series cross-section (TSCS) data, defin...
This paper provides a review of linear panel data models with slope heterogeneity, introduces variou...
This paper provides a generalized model for the random-coefficients panel data model where the error...
We examine some issues in the estimation of time-series cross-section models, calling into question...
In this paper we study identification and estimation of a correlated random coefficients (CRC) panel...
In business and other areas, data bases are often encountered which consist of a multivariate statis...
This article challenges Fixed Effects (FE) modelling as the ‘default’ for time-series-cross-sectiona...
This paper studies the asymptotics of the Weighted Least Squares (WLS) estimator of the autoregressi...
his paper examines the panel data models when the regression coefficients are fixed, random, and mix...
This article considers random coefficient models (RCMs) for time-series–cross-section data. These mo...
This paper considers random coefficient models (RCMs) for time-series–cross-section data. These mode...
This paper considers random coefficient models (RCMs) for time-series–cross-section data. These mode...
This article considers random coefficient models (RCMs) for time-series-cross-section data. These mo...
A particularly useful approach for analyzing pooled cross sectional and time series data is Swamy's ...
This paper examines the panel data models when the regression coefficients are fixed, random, and mi...
Several models are available for the analysis of pooled time-series cross-section (TSCS) data, defin...
This paper provides a review of linear panel data models with slope heterogeneity, introduces variou...
This paper provides a generalized model for the random-coefficients panel data model where the error...
We examine some issues in the estimation of time-series cross-section models, calling into question...
In this paper we study identification and estimation of a correlated random coefficients (CRC) panel...
In business and other areas, data bases are often encountered which consist of a multivariate statis...
This article challenges Fixed Effects (FE) modelling as the ‘default’ for time-series-cross-sectiona...
This paper studies the asymptotics of the Weighted Least Squares (WLS) estimator of the autoregressi...
his paper examines the panel data models when the regression coefficients are fixed, random, and mix...