A General Weighting Theory for Ensemble Learning: Beyond Variance Reduction via Spectral and Geometric Structure
Ernest Fokou\'e

TL;DR
This paper introduces a comprehensive weighting framework for ensemble learning that extends beyond variance reduction, leveraging spectral and geometric insights to optimize weights for improved performance across various models.
Contribution
It develops a unified theory formalizing ensembles as linear operators with spectral and geometric constraints, enabling structured weights to outperform uniform averaging.
Findings
Structured weights can outperform uniform ensembles.
Optimal weights are solutions to constrained quadratic programs.
Classical ensemble methods are special cases within this framework.
Abstract
Ensemble learning is traditionally justified as a variance-reduction strategy, explaining its strong performance for unstable predictors such as decision trees. This explanation, however, does not account for ensembles constructed from intrinsically stable estimators-including smoothing splines, kernel ridge regression, Gaussian process regression, and other regularized reproducing kernel Hilbert space (RKHS) methods whose variance is already tightly controlled by regularization and spectral shrinkage. This paper develops a general weighting theory for ensemble learning that moves beyond classical variance-reduction arguments. We formalize ensembles as linear operators acting on a hypothesis space and endow the space of weighting sequences with geometric and spectral constraints. Within this framework, we derive a refined bias-variance approximation decomposition showing how…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Stochastic Gradient Optimization Techniques · Adversarial Robustness in Machine Learning
