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Outlier-Robust Kernel Hierarchical-Optimization RLS On A Budget With Affine Constraints
[post]
2020
unpublished
<div>This paper introduces a non-parametric learning framework to combat outliers in online, multi-output, and nonlinear regression tasks. A hierarchical-optimization problem underpins the learning task: Search in a reproducing kernel Hilbert space (RKHS) for a function that minimizes a sample average $\ell_p$-norm ($1 \leq p \leq 2$) error loss on data contaminated by noise and outliers, subject to side information that takes the form of affine constraints defined as the set of minimizers of a
doi:10.36227/techrxiv.13110893
fatcat:lznewltuwrhzpha62vzwcxtwvm