A flexible Bayesian generalized linear model for dichotomous response data with an application to text categorization
Susana Eyheramendy, David Madigan
Abstract
We present a class of sparse generalized linear models that include probit and logistic regression as special cases and offer some extra flexibility. We provide an EM algorithm for learning the parameters of these models from data. We apply our method in text classification and in simulated data and show that our method outperforms the logistic and probit models and also the elastic net, in general by a substantial margin.
First Page:
Show
Hide
Primary Subjects: 62-02, 62J12
Keywords: Generalized linear model; text classification; binary regression
Full-text: Open access
Links and Identifiers
Permanent link to this document: http://projecteuclid.org/euclid.lnms/1196794944
Digital Object Identifier: doi:10.1214/074921707000000067
Institute of Mathematical Statistics Lecture Notes - Monograph Series