Bayesian auxiliary variable models for binary and multinomial regression
In this paper we discuss auxiliary variable approaches to Bayesian binary and multinomial regression. These approaches are ideally suited to automated Markov chain Monte Carlo simulation. In the first part we describe a simple technique using joint updating that improves the performance of the conve...
Autori principali: | Holmes, C, Held, L |
---|---|
Natura: | Journal article |
Lingua: | English |
Pubblicazione: |
2006
|
Documenti analoghi
Documenti analoghi
-
Bayesian Auxiliary Variable Models for Binary and Multinomial Regression
di: Holmes, C, et al.
Pubblicazione: (2006) -
Bayesian Estimation of the Multinomial Logit Model: A Comment on Holmes and Held, "Bayesian Auxiliary Variable Models for Binary and Multinomial Regression" Response
di: Holmes, C, et al.
Pubblicazione: (2011) -
Bayesian Lasso and multinomial logistic regression on GPU.
di: Rok Češnovar, et al.
Pubblicazione: (2017-01-01) -
MicroBVS: Dirichlet-tree multinomial regression models with Bayesian variable selection - an R package
di: Matthew D. Koslovsky, et al.
Pubblicazione: (2020-07-01) -
Taba Binary, Multinomial, and Ordinal Regression Models: New Machine Learning Methods for Classification
di: Mohammad Tabatabai, et al.
Pubblicazione: (2024-12-01)