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Regression Coefficient Identification Decay in The Presence of Infrequent Classification Errors

Brent Kreider

Iowa State University

The Review of Economics and Statistics 2010

Recent evidence from Bound, Brown, and Mathiowetz (2001) and Black, Sanders, and Taylor (2003) suggests that reporting errors in survey data routinely violate all of the classical measurement error assumptions. The econometrics literature has not considered the consequences of fully arbitrary measurement error for identification of regression coefficients. This paper highlights the severity of the identification problem given the presence of even infrequent arbitrary errors in a binary regressor. In the empirical component, health insurance misclassification rates of less than 1.3% generate double-digit percentage point ranges of uncertainty about the variable's true marginal effect on the use of health services.

DOI
10.1162/rest_a_00044
Volume
92 (4)
Pages
1017-1023
Language
en
Export
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