Bayesian Additive Regression Trees for functional ANOVA model

arXiv stat.ML / 4/1/2026

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Key Points

  • The paper introduces ANOVA Bayesian Additive Regression Trees (ANOVA-BART), an extension of Bayesian Additive Regression Trees that uses functional ANOVA decomposition to attribute model variability to specific covariate/factor interactions.
  • ANOVA-BART is designed to improve interpretability while maintaining (and extending) BART’s theoretical guarantees, positioning it as a balance between accuracy and explanation.
  • The authors prove near-minimax optimal posterior concentration rates for ANOVA-BART and derive convergence rates for individual interactions, a granularity not available for standard BART.
  • Experiments indicate ANOVA-BART matches BART on predictive performance and uncertainty quantification, and it can additionally support component selection through its decomposed structure.

Abstract

Bayesian Additive Regression Trees (BART) is a powerful statistical model that leverages the strengths of Bayesian inference and regression trees. It has received significant attention for capturing complex non-linear relationships and interactions among predictors. However, the accuracy of BART often comes at the cost of interpretability. To address this limitation, we propose ANOVA Bayesian Additive Regression Trees (ANOVA-BART), a novel extension of BART based on the functional ANOVA decomposition, which is used to decompose the variability of a function into different interactions, each representing the contribution of a different set of covariates or factors. Our proposed ANOVA-BART enhances interpretability, preserves and extends the theoretical guarantees of BART, and achieves comparable prediction performance. Specifically, we establish that the posterior concentration rate of ANOVA-BART is nearly minimax optimal, and further provides the same convergence rates for each interaction that are not available for BART. Moreover, comprehensive experiments confirm that ANOVA-BART is comparable to BART in both accuracy and uncertainty quantification, while also demonstrating its effectiveness in component selection. These results suggest that ANOVA-BART offers a compelling alternative to BART by balancing predictive accuracy, interpretability, and theoretical consistency.