Bias in odds ratios from logistic regression methods with sparse data sets.
Masahiko GoshoTomohiro OhigashiKengo NagashimaYuri ItoKazushi MaruoPublished in: Journal of epidemiology (2021)
The Bayesian methods using log F-type priors and hyper-g prior are superior to the ML, Firth's, and exact methods when fitting logistic models to sparse data sets. The choice of a preferable method depends on the null and alternative hypothesis. Sensitivity analysis is important to understand the robustness of the results in sparse data analysis.