Bayesian discrete conditional transformation models

2022 | journal article. A publication with affiliation to the University of Göttingen.

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​Bayesian discrete conditional transformation models​
Carlan, M. & Kneib, T. ​ (2022) 
Statistical Modelling, art. 1471082X2211141​.​ DOI: https://doi.org/10.1177/1471082X221114177 

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Authors
Carlan, Manuel; Kneib, Thomas 
Abstract
We propose a novel Bayesian model framework for discrete ordinal and count data based on conditional transformations of the responses. The conditional transformation function is estimated from the data in conjunction with an a priori chosen reference distribution. For count responses, the resulting transformation model is novel in the sense that it is a Bayesian fully parametric yet distribution-free approach that can additionally account for excess zeros with additive transformation function specifications. For ordinal categoric responses, our cumulative link transformation model allows the inclusion of linear and non-linear covariate effects that can additionally be made category-specific, resulting in (non-)proportional odds or hazards models and more, depending on the choice of the reference distribution. Inference is conducted by a generic modular Markov chain Monte Carlo algorithm where multivariate Gaussian priors enforce specific properties such as smoothness on the functional effects. To illustrate the versatility of Bayesian discrete conditional transformation models, applications to counts of patent citations in the presence of excess zeros and on treating forest health categories in a discrete partial proportional odds model are presented.
Issue Date
2022
Journal
Statistical Modelling 
Organization
Wirtschaftswissenschaftliche Fakultät ; Professuren für Statistik und Ökonometrie 
ISSN
1471-082X
eISSN
1477-0342
Language
English

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