Skip to content
  • enzuazua
  • Events Calendar
  • Jobs
cmc.deusto.eus
  • Home
  • About us
    • About DeustoCCM
    • Head of DeustoCCM
    • Team
    • Past Members
  • Research
    • Projects
    • ERC CoDeFeL
    • Computational Mathematics Research Group
    • DyCon Blog
    • DyCon Toolbox
    • Industrial & Social TransferenceContents related to the industrial and social transference aspects of the work in the Chair of Computational Mathematics.
  • Publications
    • Publications (All)
    • Publications by year
      • Publications 2025
      • Publications 2024
      • Publications 2023
      • Publications 2022
      • Publications 2021
      • Publications 2020
      • Publications 2019
      • Publications 2018
      • Publications 2017
      • Publications 2016
    • AcceptedAccepted to be released
    • SubmittedSubmitted publications
  • Activities
    • Events calendar
    • Seminars
    • Highlights
    • Our Latest
    • Courses
    • Past Events
    • enzuazua
    • Gallery
  • Jobs
  • Contact

Deep Neural Networks: Multi-Classification and Universal Approximation

M. Hernandez, E. Zuazua (2025)Deep Neural Networks: Multi-Classification and Universal Approximation arXiv:2409.06555

Abstract. We demonstrate that a ReLU deep neural network with a width of 2 and a depth of 2N+4M−1 layers can achieve finite sample memorization for any dataset comprising N elements in ℝd, where d≥1, and M classes, thereby ensuring accurate classification. By modeling the neural network as a time-discrete nonlinear dynamical system, we interpret the memorization property as a problem of simultaneous or ensemble controllability. This problem is addressed by constructing the network parameters inductively and explicitly, bypassing the need for training or solving any optimization problem. Additionally, we establish that such a network can achieve universal approximation in Lp(Ω;ℝ+), where Ω is a bounded subset of ℝd and p∈[1,∞), using a ReLU deep neural network with a width of d+1. We also provide depth estimates for approximating W1,p functions and width estimates for approximating Lp(Ω;ℝm) for m≥1. Our proofs are constructive, offering explicit values for the biases and weights involved.

arxiv: 2409.06555

  • Benasque XI Workshop-Summer School 2026: Partial differential equations, optimal design and numerics
  • The Mathematics of Scientific Machine Learning and Digital Twins
  • DeustoCCM Seminar: Research on Control Problems of Several Types of Infinite-Dimensional Systems
  • DeustoCCM Seminar: Developing Mathematical and Physical Tools for Multiscale Dynamical Systems. Applications to Neurophysiological Data
Copyright 2016 - 2025 DeustoCCM — cmc.deusto.eus. All rights reserved. Chair of Computational Mathematics, University of Deusto
Scroll to Top
  • Aviso Legal
  • Política de Privacidad
  • Política de Cookies
  • Configuración de Cookies
WE USE COOKIES ON THIS SITE TO ENHANCE USER EXPERIENCE. We also use analytics. By navigating any page you are giving your consent for us to set cookies.    more information
Privacidad