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 prior distribution as a default choice for routine applied use. It has the advantage of always giving answers, even when there is complete separation in logistic regression (a common problem, even when the sample size is large and the number of predictors is small), and also automatically applying more shrinkage to higher-order interactions. This can be useful in routine data analysis as well as in automated procedures such as chained equations for missing-data imputation. We implement a procedure to fit generalized linear models in R with the Student-t prior distribution by incorporating an approximate EM algorithm into the usual iteratively weighted least squares. We illustrate with several applications, including a series of logistic regressions predicting voting preferences, a small bioassay experiment, and an imputation model for a public health data set. © Institute of Mathematical Statistics.

A weakly informative default prior distribution for logistic and other regression models / Gelman, Andrew; Aleks, Jakulin; Pittau, Maria Grazia. - In: THE ANNALS OF APPLIED STATISTICS. - ISSN 1932-6157. - 2:4(2008), pp. 1360-1383. [10.1214/08-aoas191]

A weakly informative default prior distribution for logistic and other regression models

PITTAU, Maria Grazia
2008

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 prior distribution as a default choice for routine applied use. It has the advantage of always giving answers, even when there is complete separation in logistic regression (a common problem, even when the sample size is large and the number of predictors is small), and also automatically applying more shrinkage to higher-order interactions. This can be useful in routine data analysis as well as in automated procedures such as chained equations for missing-data imputation. We implement a procedure to fit generalized linear models in R with the Student-t prior distribution by incorporating an approximate EM algorithm into the usual iteratively weighted least squares. We illustrate with several applications, including a series of logistic regressions predicting voting preferences, a small bioassay experiment, and an imputation model for a public health data set. © Institute of Mathematical Statistics.
2008
bayesian inference; generalized linear model; hierarchical model; least squares; linear regression; logistic regression; multilevel model; noninformative prior distribution; weakly informative prior distribution
01 Pubblicazione su rivista::01a Articolo in rivista
A weakly informative default prior distribution for logistic and other regression models / Gelman, Andrew; Aleks, Jakulin; Pittau, Maria Grazia. - In: THE ANNALS OF APPLIED STATISTICS. - ISSN 1932-6157. - 2:4(2008), pp. 1360-1383. [10.1214/08-aoas191]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/127762
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