between-groups estimator

An estimator of the parameters in a linear regression model with panel data, using the time averages of the data for each cross-section unit.

Background

In econometrics and statistics, the estimation of parameters in panel data models is a crucial task. Panel data, also known as longitudinal data, involve observations on multiple entities (like firms, individuals, or countries) observed over multiple time periods. Several techniques are employed to estimate these models, among which the between-groups estimator plays a significant role.

Historical Context

The use of panel data has expanded significantly as it offers the advantage of controlling for individual heterogeneity. The between-groups estimator traces back to the development of linear regression analysis and its extensions to more complex datasets involving time-series and cross-sectional dimensions.

Definitions and Concepts

Between-Groups Estimator: An estimator of the vector of parameters in a linear regression model with panel data. It is computed as an ordinary least squares (OLS) estimator using time averages of the data for each cross-section unit (group means).

The between-groups estimator serves as one approach to disentangle individual specific effects from the overall effects measured over time. It is consistent when OLS on the pooled data is consistent but is generally less efficient relative to generalized least squares (GLS).

Major Analytical Frameworks

Classical Economics

Limited application; panel data methods aren’t commonly addressed directly.

Neoclassical Economics

Widely uses panel data for case studies in growth and productivity, applying the between-groups estimator for simplified models.

Keynesian Economics

Macro-level analyses may sometimes employ the between-groups estimator to evaluate average behaviors across nations or terms.

Marxian Economics

Seldom uses panel data methods; focuses primarily on historical and comparative methodologies.

Institutional Economics

Utilizes panel data for institutional comparisons across diverse regions, favoring methodologies like the between-groups estimator.

Behavioral Economics

Attention on average behavioral responses over time can leverage the between-groups methodology.

Post-Keynesian Economics

Focuses more on time-series than cross-sectional comparisons; occasional utility for between-groups estimations to address temporal dynamics.

Austrian Economics

Generally skeptical of aggregated data but may find limited niche applications in specific micro-level studies.

Development Economics

Key area, especially for cross-country growth models, assessing average effects with the between-groups estimator.

Monetarism

Utilized occasionally to assess average policy impacts across varying time frames.

Comparative Analysis

In panel data analysis, estimators are compared based on their consistency, efficiency, and unbiasedness. The between-groups estimator, with consistency reliant on OLS properties, offers ease of implementation and interpretability. However, it is outperformed by generalized least squares (GLS) concerning efficiency, given GLS accommodates heteroskedasticity and autocorrelation within panels more effectively.

Case Studies

  • Growth Determinants Across Countries: Using between-groups estimators, researchers can assess the impact of economic policies averaged over time for multiple countries.
  • Industry Productivity Analyses: Examining aggregate productivity metrics across different industry segments over several years.

Suggested Books for Further Studies

  • “Econometric Analysis of Panel Data” by Badi H. Baltagi
  • “Econometrics” by Fumio Hayashi
  • “Panel Data Econometrics” by Manuel Arellano
  • Panel Data: Data containing observations on multiple entities that are followed over multiple time periods.
  • Within-Groups Estimator: Another panel data estimation method focusing on deviations from group means, removing entity-specific averages.
  • Generalized Least Squares (GLS): An estimation technique that generalizes OLS by incorporating weights to account for heteroskedasticity or autocorrelation.
Wednesday, July 31, 2024