2024
DOI: 10.1002/sam.11683
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Bayesian relative composite quantile regression approach of ordinal latent regression model with L1/2 regularization

Tian Yu‐Zhu,
Wu Chun‐Ho,
Tai Ling‐Nan
et al.

Abstract: Ordinal data frequently occur in various fields such as knowledge level assessment, credit rating, clinical disease diagnosis, and psychological evaluation. The classic models including cumulative logistic regression or probit regression are often used to model such ordinal data. But these modeling approaches conditionally depict the mean characteristic of response variable on a cluster of predictive variables, which often results in non‐robust estimation results. As a considerable alternative, composite quant… Show more

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