scispace - formally typeset
Open AccessJournal ArticleDOI

Bayesian multinomial regression with class-specific predictor selection

TLDR
In this paper, a class-specific predictor selection approach is proposed for multinomial regression models, where the response of a unit's membership in one of several possible unordered classes is associated with a set of predictor variables and the subset of predictors associated with the response can be treated as an unknown parameter.
Abstract
Consider a multinomial regression model where the response, which indicates a unit's membership in one of several possible unordered classes, is associated with a set of predictor variables. Such models typically involve a matrix of regression coefficients, with the $(j,k)$ element of this matrix modulating the effect of the $k$th predictor on the propensity of the unit to belong to the $j$th class. Thus, a supposition that only a subset of the available predictors are associated with the response corresponds to some of the columns of the coefficient matrix being zero. Under the Bayesian paradigm, the subset of predictors which are associated with the response can be treated as an unknown parameter, leading to typical Bayesian model selection and model averaging procedures. As an alternative, we investigate model selection and averaging, whereby a subset of individual elements of the coefficient matrix are zero. That is, the subset of predictors associated with the propensity to belong to a class varies with the class. We refer to this as class-specific predictor selection. We argue that such a scheme can be attractive on both conceptual and computational grounds.

read more

Citations
More filters
Journal ArticleDOI

LOGICOIL — Multi-state prediction of coiled-coil oligomeric state

TL;DR: This work introduces LOGICOIL, the first algorithm to address the problem of predicting multiple coiled-coil oligomeric states from protein-sequence information alone, and is a net improvement compared with other existing methods.

Bayesian constrained variable selection

TL;DR: In this article, a Bayesian hierarchical model for constrained variable selection is proposed, which is based on the usual stochastic search approach for Bayesian variable selection (George & Mc Culloch, 1993).
Book ChapterDOI

Bayesian Models for Variable Selection that Incorporate Biological Information

TL;DR: This paper first review Bayesian variable selection methods for linear settings, including regression and classification models, and focuses in particular on recent prior constructions that have been used for the analysis of genomic data.

Clustering ranked preference data using sociodemographic covariates.

TL;DR: In this article, a mixture of experts model for preference data is developed by combining a mixture-of-experts model and a mixtureof Plackett-Luce models, where covariates are included through the mixing proportions and through the parameters of component densities using generalized linear model theory.
Journal ArticleDOI

Bayesian Variable Selection for Latent Class Models

TL;DR: A latent class model with class probabilities that depend on subject‐specific covariates is developed and a Bayesian variable selection approach is proposed and implemented to obtain model‐averaged estimates of quantities of interest such as marginal inclusion probabilities of predictors.
References
More filters
Book

Pattern recognition and neural networks

TL;DR: Professor Ripley brings together two crucial ideas in pattern recognition; statistical methods and machine learning via neural networks in this self-contained account.

Pattern Recognition and Neural Networks

TL;DR: Title Type pattern recognition with neural networks in c++ PDF pattern recognition and neural networks PDF Neural networks for pattern recognition advanced texts in econometrics PDF neural networks for applied sciences and engineering from fundamentals to complex pattern recognition PDF
Journal ArticleDOI

Bayesian analysis of binary and polychotomous response data

TL;DR: In this paper, exact Bayesian methods for modeling categorical response data are developed using the idea of data augmentation, which can be summarized as follows: the probit regression model for binary outcomes is seen to have an underlying normal regression structure on latent continuous data, and values of the latent data can be simulated from suitable truncated normal distributions.
Journal ArticleDOI

Variable selection via Gibbs sampling

TL;DR: In this paper, the Gibbs sampler is used to indirectly sample from the multinomial posterior distribution on the set of possible subset choices to identify the promising subsets by their more frequent appearance in the Gibbs sample.
Related Papers (5)