Dealing with Separation in Logistic Regression Models
Carlisle Rainey
Political Analysis, 2016, vol. 24, issue 3, 339-355
Abstract:
When facing small numbers of observations or rare events, political scientists often encounter separation, in which explanatory variables perfectly predict binary events or nonevents. In this situation, maximum likelihood provides implausible estimates and the researcher might want incorporate some form of prior information into the model. The most sophisticated research uses Jeffreys’ invariant prior to stabilize the estimates. While Jeffreys’ prior has the advantage of being automatic, I show that it often provides too much prior information, producing smaller point estimates and narrower confidence intervals than even highly skeptical priors. To help researchers assess the amount of information injected by the prior distribution, I introduce the concept of a partial prior distribution and develop the tools required to compute the partial prior distribution of quantities of interest, estimate the subsequent model, and summarize the results.
Date: 2016
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Persistent link: https://EconPapers.repec.org/RePEc:cup:polals:v:24:y:2016:i:03:p:339-355_01
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