Authors
Patrick L Combettes, Saverio Salzo, Silvia Villa
Publication date
2018/1/7
Journal
Analysis and Applications
Volume
16
Issue
01
Pages
1-54
Publisher
World Scientific Publishing Company
Description
This paper proposes a unified framework for the investigation of constrained learning theory in reflexive Banach spaces of features via regularized empirical risk minimization. The focus is placed on Tikhonov-like regularization with totally convex functions. This broad class of regularizers provides a flexible model for various priors on the features, including, in particular, hard constraints and powers of Banach norms. In such context, the main results establish a new general form of the representer theorem and the consistency of the corresponding learning schemes under general conditions on the loss function, the geometry of the feature space, and the modulus of total convexity of the regularizer. In addition, the proposed analysis gives new insight into basic tools such as reproducing Banach spaces, feature maps, and universality. Even when specialized to Hilbert spaces, this framework yields new results that …
Total citations
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Scholar articles
PL Combettes, S Salzo, S Villa - Analysis and Applications, 2018
PL Combettes, S Salzo, S Villa - arXiv preprint arXiv:1410.6847, 2014
PL Combettes, S Salzo, S Villa - Preprint, 2014