불균형 순서형 자료에 대한 베이지안 가법 회귀 나무 분석
Bayesian additive regression trees for imbalanced ordinal outcomes
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초록

The ordered probit Bayesian additive regression trees (OPBART) model is an extension of the Bayesian additive regression trees (BART) framework designed to handle ordinal response variables. In this study, we apply OPBART to imbalanced ordinal data. Specifically, we employ OPBART to predict smoking level using real-world data from the 2023 Korea National Health and Nutrition Examination Survey (KNHANES 2023), in which the response variable (smoking level) exhibits a highly imbalanced distribution. To examine more concretely how well the OPBART handles imbalanced data, we conducted four simulation scenarios under both balanced and imbalanced conditions. We compare the predictive performance of OPBART with alternative models in both the real data analysis and simulation study to determine which method performs best. The results demonstrate that OPBART outperforms competing models. These findings suggest that OPBART can serve as a promising alternative for modeling imbalanced ordinal outcomes.

키워드

베이지안 가법 회귀 나무분류불균형 순서형 자료순서형 프로빗 모형Bayesian additive regression treesclassificationimbalanced ordinal outcomeordered probit model
제목
불균형 순서형 자료에 대한 베이지안 가법 회귀 나무 분석
제목 (타언어)
Bayesian additive regression trees for imbalanced ordinal outcomes
저자
이현민황범석
DOI
10.5351/KJAS.2025.38.5.665
발행일
2025-10
유형
Article
저널명
응용통계연구
38
5
페이지
665 ~ 677