Sociological Methodology
Vol. 39, Issue 1, Pages 293-326
August 2009
Abstract
Regression-based studies of inequality model only between-group differences,
yet often these differences are far exceeded by residual inequality.
Residual inequality is usually attributed to measurement error or the influence
of unobserved characteristics. We present a regression that includes
covariates for both the mean and variance of a dependent variable.
In this model, the residual variance is treated as a target for analysis. In
analyses of inequality, the residual variance might be interpreted as measuring
risk or insecurity. Variance function regressions are illustrated in
an analysis of panel data on earnings among released prisoners in the National
Longitudinal Survey of Youth. We extend the model to a decomposition
analysis, relating the change in inequality to compositional changes in
the population and changes in coefficients for the mean and variance. The
decomposition is applied to the trend in US earnings inequality among
male workers, 1970 to 2005.
Citation
Western, Bruce, and Deirdre Bloom. "Variance Function Regressions for Studying Inequality." Sociological Methodology 39.1 (August 2009): 293-326.