Estimation of marginal odds ratios
Estimation of marginal odds ratios
Key takeaways
Bibliography: Jann, B., Karlson, K.B., 2023. Estimation of marginal odds ratios. https://doi.org/10.48350/176998
Authors:: Ben Jann, Kristian Bernt Karlson
Tags: #300-Social-sciences,-sociology-&-anthropology
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First-page:
Coefficients from logistic regression are affected by noncollapsibility, which means that the comparison of coefficients across models may be misleading. Several strategies have been proposed in the literature to respond to these difficulties, the most popular of which is to report average marginal effects (on the probability scale) rather than odds ratios. Average marginal effects (ames) have many desirable properties but at least in part they throw the baby out with the bathwater. The size of an ame strongly depends on the marginal distribution of the dependent variable; for events that are very likely or very unlikely the ame necessarily has to be small because the probability space is bounded. Logistic regression, in contrast, estimates odds ratios which are free from such flooring and ceiling effects. Hence, odds ratios may be more appropriate than ames for comparison of effect sizes in many applications. Yet, logistic regression estimates conditional odds ratios, which are not comparable across different specifications.
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