Self‐certifying classification by linearized deep assignment

  • We propose a novel class of deep stochastic predictors for classifying metric data on graphs within the PAC-Bayes risk certification paradigm. Classifiers are realized as linearly parametrized deep assignment flows with random initial conditions. Building on the recent PAC-Bayes literature and data-dependent priors, this approach enables (i) to use risk bounds as training objectives for learning posterior distributions on the hypothesis space and (ii) to compute tight out-of-sample risk certificates of randomized classifiers more efficiently than related work. Comparison with empirical test set errors illustrates the performance and practicality of this self-certifying classification method.

Download full text files

Export metadata

Statistics

Number of document requests

Additional Services

Share in Twitter Search Google Scholar
Metadaten
Author:Bastian Boll, Alexander Zeilmann, Stefania PetraORCiDGND, Christoph Schnörr
URN:urn:nbn:de:bvb:384-opus4-1104851
Frontdoor URLhttps://opus.bibliothek.uni-augsburg.de/opus4/110485
ISSN:1617-7061OPAC
Parent Title (English):PAMM: Proceedings in Applied Mathematics & Mechanics
Publisher:Wiley
Place of publication:Weinheim
Type:Article
Language:English
Year of first Publication:2023
Publishing Institution:Universität Augsburg
Release Date:2024/01/09
Volume:23
Issue:1
First Page:e202200169
Note:
Special issue: 92nd Annual Meeting of the International Association of Applied Mathematics and Mechanics (GAMM), May 2023
DOI:https://doi.org/10.1002/pamm.202200169
Institutes:Mathematisch-Naturwissenschaftlich-Technische Fakultät
Mathematisch-Naturwissenschaftlich-Technische Fakultät / Institut für Mathematik
Mathematisch-Naturwissenschaftlich-Technische Fakultät / Institut für Mathematik / Lehrstuhl für Mathematische Bildverarbeitung
Dewey Decimal Classification:5 Naturwissenschaften und Mathematik / 51 Mathematik / 510 Mathematik
Licence (German):CC-BY 4.0: Creative Commons: Namensnennung (mit Print on Demand)