Structured Mixture of Continuation-ratio Logits Models for Ordinal Regression

11/08/2022
by   Jizhou Kang, et al.
0

We develop a nonparametric Bayesian modeling approach to ordinal regression based on priors placed directly on the discrete distribution of the ordinal responses. The prior probability models are built from a structured mixture of multinomial distributions. We leverage a continuation-ratio logits representation to formulate the mixture kernel, with mixture weights defined through the logit stick-breaking process that incorporates the covariates through a linear function. The implied regression functions for the response probabilities can be expressed as weighted sums of parametric regression functions, with covariate-dependent weights. Thus, the modeling approach achieves flexible ordinal regression relationships, avoiding linearity or additivity assumptions in the covariate effects. A key model feature is that the parameters for both the mixture kernel and the mixture weights can be associated with a continuation-ratio logits regression structure. Hence, an efficient and relatively easy to implement posterior simulation method can be designed, using Pólya-Gamma data augmentation. Moreover, the model is built from a conditional independence structure for category-specific parameters, which results in additional computational efficiency gains through partial parallel sampling. In addition to the general mixture structure, we study simplified model versions that incorporate covariate dependence only in the mixture kernel parameters or only in the mixture weights. For all proposed models, we discuss approaches to prior specification and develop Markov chain Monte Carlo methods for posterior simulation. The methodology is illustrated with several synthetic and real data examples.

READ FULL TEXT
research
11/16/2022

Bayesian Nonparametric Erlang Mixture Modeling for Survival Analysis

We develop a flexible Erlang mixture model for survival analysis. The mo...
research
08/04/2022

Tree stick-breaking priors for covariate-dependent mixture models

Stick-breaking priors are often adopted in Bayesian nonparametric mixtur...
research
07/02/2020

Non-parametric ordinal regression under a monotonicity constraint

Compared to the nominal scale, ordinal scale for a categorical outcome v...
research
07/01/2023

Flexible Bayesian Modeling for Longitudinal Binary and Ordinal Responses

Longitudinal studies with binary or ordinal responses are widely encount...
research
07/29/2020

Spatially dependent mixture models via the Logistic Multivariate CAR prior

We consider the problem of spatially dependent areal data, where for eac...
research
01/16/2020

Multiscale stick-breaking mixture models

We introduce a family of multiscale stick-breaking mixture models for Ba...
research
05/26/2021

Flexible Bayesian modelling of concomitant covariate effects in mixture models

Mixture models provide a useful tool to account for unobserved heterogen...

Please sign up or login with your details

Forgot password? Click here to reset