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Structured Basis Function Networks: Loss-Centric Multi-Hypothesis Ensembles with Controllable Diversity

Machine Learning 2025-09-04 v1

Abstract

Existing approaches to predictive uncertainty rely either on multi-hypothesis prediction, which promotes diversity but lacks principled aggregation, or on ensemble learning, which improves accuracy but rarely captures the structured ambiguity. This implicitly means that a unified framework consistent with the loss geometry remains absent. The Structured Basis Function Network addresses this gap by linking multi-hypothesis prediction and ensembling through centroidal aggregation induced by Bregman divergences. The formulation applies across regression and classification by aligning predictions with the geometry of the loss, and supports both a closed-form least-squares estimator and a gradient-based procedure for general objectives. A tunable diversity mechanism provides parametric control of the bias-variance-diversity trade-off, connecting multi-hypothesis generalisation with loss-aware ensemble aggregation. Experiments validate this relation and use the mechanism to study the complexity-capacity-diversity trade-off across datasets of increasing difficulty with deep-learning predictors.

Keywords

Cite

@article{arxiv.2509.02792,
  title  = {Structured Basis Function Networks: Loss-Centric Multi-Hypothesis Ensembles with Controllable Diversity},
  author = {Alejandro Rodriguez Dominguez and Muhammad Shahzad and Xia Hong},
  journal= {arXiv preprint arXiv:2509.02792},
  year   = {2025}
}

Comments

32 Pages, 10 Figures, 11 Tables

R2 v1 2026-07-01T05:18:15.699Z