A WEAKLY INFORMATIVE DEFAULT PRIOR DISTRIBUTION FOR LOGISTIC AND OTHER REGRESSION MODELS
City University of New York · Columbia University
Abstract
We propose a new prior distribution for classical (nonhierarchical) logistic regression models, constructed by first scaling all nonbinary variables to have mean 0 and standard deviation 0.5, and then placing independent Student-t prior distributions on the coefficients. As a default choice, we recommend the Cauchy distribution with center 0 and scale 2.5, which in the simplest setting is a longer-tailed version of the distribution attained by assuming one-half additional success and one-half additional failure in a logistic regression. Cross-validation on a corpus of datasets shows the Cauchy class of prior distributions to outperform existing implementations of Gaussian and Laplace priors. We recommend this…
Citation impact
- FWCI
- 36.84
- Percentile
- 100%
- References
- 53
Authors
3- AGAndrew GelmanCorresponding
City University of New York, Columbia University
- AJAleks Jakulin
City University of New York, Columbia University
- MGMaria Grazia
City University of New York, Columbia University
Topics & keywords
- Cauchy distribution
- Logistic regression
- Mathematics
- Statistics
- Prior probability
- Imputation (statistics)
- Missing data
- Computer science
- Peace, Justice and strong institutions