Suche nach Personen

plus im Publikationsserver
plus bei BASE
plus bei Google Scholar

Daten exportieren

 

Fine-Grained Analysis of Nonparametric Estimation for Pairwise Learning

Titelangaben

Verfügbarkeit überprüfen

Zhou, Junyu ; Huang, Shuo ; Feng, Han ; Wang, Puyu ; Zhou, Ding-Xuan:
Fine-Grained Analysis of Nonparametric Estimation for Pairwise Learning.
In: IEEE Transactions on Neural Networks and Learning Systems. (Februar 2026). - 12 S.
ISSN 2162-237x

Volltext

Volltext Link zum Volltext (externe URL):
https://doi.org/10.1109/TNNLS.2026.3661550

Kurzfassung/Abstract

In this article, we are concerned with the generalization performance of nonparametric estimation for pairwise learning. Most of the existing work requires the hypothesis space to be convex or a VC-class, and the loss to be convex. However, these restrictive assumptions limit the applicability of the results in studying many popular methods, especially kernel methods and neural networks. We significantly relax these restrictive assumptions and establish a sharp oracle inequality of the empirical minimizer with a general hypothesis space for the Lipschitz continuous pairwise losses. As an example, we apply our general results to study pairwise least squares regression and derive an excess population risk bound that matches the minimax lower bound for the pointwise least squares regression. The key novelty lies in constructing a structured deep ReLU neural network to approximate the true predictor, and in designing a targeted hypothesis space composed of networks with this structure and controllable complexity. Experiments validate the effectiveness of the proposed method. This example demonstrates that the obtained general results indeed help us to explore the generalization performance on a variety of problems that cannot be handled by existing approaches.

Weitere Angaben

Publikationsform:Artikel
Sprache des Eintrags:Englisch
Institutionen der Universität:Mathematisch-Geographische Fakultät > Mathematik > Lehrstuhl für Mathematik - Reliable Machine Learning
Mathematisch-Geographische Fakultät > Mathematik > Mathematisches Institut für Maschinelles Lernen und Data Science (MIDS)
DOI / URN / ID:10.1109/TNNLS.2026.3661550
Peer-Review-Journal:Ja
Verlag:IEEE
Die Zeitschrift ist nachgewiesen in:
Titel an der KU entstanden:Ja
KU.edoc-ID:36580
Eingestellt am: 22. Apr 2026 12:20
Letzte Änderung: 22. Apr 2026 12:20
URL zu dieser Anzeige: https://edoc.ku.de/id/eprint/36580/
AnalyticsGoogle Scholar