Meta-anova: screening interactions for interpretable machine learning
- Abstract
- There are two things to be considered when we evaluate predictive models. One is prediction accuracy, and the other is interpretability. Over the recent decades, many prediction models of high performance, such as ensemble-based models and deep neural networks, have been developed. However, these models are often too complex, making it difficult to intuitively interpret their predictions. This complexity in interpretation limits their use in many real-world fields that require accountability, such as medicine, finance, and college admissions. In this study, we develop a novel method called Meta-ANOVA to provide an interpretable model for any given prediction model. The basic idea of Meta-ANOVA is to transform a given black-box prediction model to the functional ANOVA model. A novel technical contribution of Meta-ANOVA is a procedure of screening out unnecessary interactions before transforming a given black-box model to the functional ANOVA model. This screening procedure allows the inclusion of higher order interactions in the transformed functional ANOVA model without computational difficulties. We prove that the screening procedure is asymptotically consistent. Through various experiments with synthetic and real-world datasets, we empirically demonstrate the superiority of Meta-ANOVA.
- Author(s)
- 김동하; 최용찬; 박석훈; 박찬무; 김용대
- Issued Date
- 2025-06-01
- Type
- Article
- Keyword
- 통계학
- DOI
- 10.48550/arxiv.2408.00973
- URI
- http://repository.sungshin.ac.kr/handle/2025.oak/8808
- Publisher
- SPRINGER HEIDELBERG
- ISSN
- 1226-3192
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Appears in Collections:
- 수리통계데이터사이언스학부 > 학술논문
- 공개 및 라이선스
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