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Published September 5, 2017 | Submitted
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Selection Bias in Linear Regression, Logit and Probit Models

Abstract

Missing data are common in observational studies due to self-selection of subjects. Missing data can bias estimates of linear regression and related models. The nature of selection bias and econometric methods for correcting it are described. The econometric approach relies upon a specification of the selection mechanism. We extend this approach to binary logit and probit models and provide a simple test for selection bias in these models. An analysis of candidate preference in the 1984 U.S. presidential election illustrates the technique.

Additional Information

Published as Dubin, Jeffrey A., and Douglas Rivers. "Selection bias in linear regression, logit and probit models." Sociological Methods & Research 18, no. 2-3 (1989): 360-390.

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