In this article, I describe an alternative approach for fitting linear models with multiple high-order fixed effects. The strategy relies on transforming the data before fitting the model. While the approach is computationally intensive, the hardware requirements for the fitting are minimal, allowing for estimation in models with multiple high-order fixed effects for large datasets. I illustrate implementing this approach using the U.S. Census Bureau Current Population Survey data with four fixed effects. I also present a new Stata command, regxfe, for implementing this strategy
The ordinary linear model has been the bedrock of signal processing, statistics, and machine learnin...
Availability of large, multilevel longitudinal databases in various fields including labor economics...
Many traditional and newly-developed causal inference approaches require imposing strong data assump...
In this article, we describe an iterative approach for the estimation of linear regression models wi...
This article proposes a memory-saving decomposition of the design matrix to facilitate the estimatio...
We consider linear mixed models in which the observations are grouped. A `1-penalization on the fixe...
A simple feasible alternative procedure to estimate models with high-dimensional fixed effects IZA d...
This thesis presents a new approach to fitting linear models, called “pace regression”, which also o...
*Acknowledgements: This paper has benefited from the comments of Julie L. Hotchkiss and Thoma
In this article, we describe how to fit panel-data ordered logit models with fixed effects using the...
International audienceLinear mixed models are especially useful when observations are grouped. In a ...
© 2014 Dr. David LazaridisMaximum likelihood (ML) or restricted maximum likelihood (REML) are typica...
Availability of large multilevel longitudinal databases in various fields of research, including lab...
Description Fit generalized linear models with binomial responses using either an adjusted-score ap-...
The paper proposes a memory saving decomposition of the design matrix to facilitate fixed effects es...
The ordinary linear model has been the bedrock of signal processing, statistics, and machine learnin...
Availability of large, multilevel longitudinal databases in various fields including labor economics...
Many traditional and newly-developed causal inference approaches require imposing strong data assump...
In this article, we describe an iterative approach for the estimation of linear regression models wi...
This article proposes a memory-saving decomposition of the design matrix to facilitate the estimatio...
We consider linear mixed models in which the observations are grouped. A `1-penalization on the fixe...
A simple feasible alternative procedure to estimate models with high-dimensional fixed effects IZA d...
This thesis presents a new approach to fitting linear models, called “pace regression”, which also o...
*Acknowledgements: This paper has benefited from the comments of Julie L. Hotchkiss and Thoma
In this article, we describe how to fit panel-data ordered logit models with fixed effects using the...
International audienceLinear mixed models are especially useful when observations are grouped. In a ...
© 2014 Dr. David LazaridisMaximum likelihood (ML) or restricted maximum likelihood (REML) are typica...
Availability of large multilevel longitudinal databases in various fields of research, including lab...
Description Fit generalized linear models with binomial responses using either an adjusted-score ap-...
The paper proposes a memory saving decomposition of the design matrix to facilitate fixed effects es...
The ordinary linear model has been the bedrock of signal processing, statistics, and machine learnin...
Availability of large, multilevel longitudinal databases in various fields including labor economics...
Many traditional and newly-developed causal inference approaches require imposing strong data assump...