2024
DOI: 10.1002/sta4.643
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Ordered probit Bayesian additive regression trees for ordinal data

Jaeyong Lee,
Beom Seuk Hwang

Abstract: Bayesian additive regression trees (BART) is a nonparametric model that is known for its flexibility and strong statistical foundation. To address a robust and flexible approach to analyse ordinal data, we extend BART into an ordered probit regression framework (OPBART). Further, we propose a semiparametric setting for OPBART (semi‐OPBART) to model covariates of interest parametrically and confounding variables nonparametrically. We also provide Gibbs sampling procedures to implement the proposed models. In bo… Show more

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References 35 publications
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