Using Cognitive Test Scores in Social Science Research
journal contribution
posted on 2007-06-10, 00:00authored byLynne Steuerle Schofield
A standard problem in social science attempts to better understand the large wage
disparities between black and white workers in U. S. labor markets. Social scientists
have conducted hundreds of studies of observed racial wage gaps, seeking to understand
the extent to which they are driven by differences in human capital or disparate
treatment by employers. In order to get an unbiased estimate of such effects, it is necessary
to include in the regression equations measures of human capital. While years of
schooling has traditionally been used as a measure of human capital, social scientists
are increasingly turning to cognitive test scores, as a more direct measure. Most social
science research that uses cognitive test scores as an independent variable models the
test score as fixed and without error. However, since test scores have measurement error,
modeling the test score in this way can produce biased results which can result in
incorrect policy conclusions. Current methods for modeling the test score with error are
limited to single point in time analysis with a fixed cognitive assessment administered
to all subjects, and situations in which the measurement error is homogeneous across
all subjects. In response to these drawbacks, a new model called the Mixed Effects
Structural Equations (MESE) model is developed. The MESE model is demonstrated
using data from the National Adult Literacy Survey by analyzing black-white wage
gaps in married men, single men, and single women. Three important findings are of
note. First, much of the black-white wage gap can be attributed to a black-white disparity
in skills suggesting that more attention ought to be focused on the development
of skills. Second, comparisons of the the MESE model to a model with no measurement
error demonstrate the importance of modeling the measurement error. Third, comparisons
of the MESE model to a model using current methodology suggest the MESE
model may solve some of the drawbacks noted in the other current methods.