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The Ethereal
Exact Finite-Sample Variance Decomposition of Subagging: A Spectral Filtering Perspective
April 12, 2026 ยท Grace Period ยท + Add venue
Authors
Ye Su, Mingrui Ye, Yining Wang, Jipeng Guo, Yong Liu
arXiv ID
2604.10469
Category
cs.LG: Machine Learning
Citations
0
Abstract
Standard resampling ratios (e.g., $ฮฑ\approx 0.632$) are widely used as default baselines in ensemble learning for three decades. However, how these ratios interact with a base learner's intrinsic functional complexity in finite samples lacks a exact mathematical characterization. We leverage the Hoeffding-ANOVA decomposition to derive the first exact, finite-sample variance decomposition for subagging, applicable to any symmetric base learner without requiring asymptotic limits or smoothness assumptions. We establish that subagging operates as a deterministic low-pass spectral filter: it preserves low-order structural signals while attenuating $c$-th order interaction variance by a geometric factor approaching $ฮฑ^c$. This decoupling reveals why default baselines often under-regularize high-capacity interpolators, which instead require smaller $ฮฑ$ to exponentially suppress spurious high-order noise. To operationalize these insights, we propose a complexity-guided adaptive subsampling algorithm, empirically demonstrating that dynamically calibrating $ฮฑ$ to the learner's complexity spectrum consistently improves generalization over static baselines.
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