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  • On the Existence of Global Minima and Convergence Analyses for Gradient Descent Methods in the Training of Deep Neural Networks

    Arnulf Jentzen, Adrian Riekert
    2022-07-06
    41390 4206 Pages:141-246 Open-access
  • Approximation Results for Gradient Flow Trained Neural Networks

    Gerrit Welper
    2024-06-27
    25011 2369 Pages:107-175 Open-access
  • A Deep Uzawa-Lagrange Multiplier Approach for Boundary Conditions in PINNs and Deep Ritz Methods

    Charalambos G. Makridakis, Aaron Pim, Tristan Pryer
    2025-09-12
    22854 266 Pages:166-191 Open-access
  • Batch Normalization Preconditioning for Stochastic Gradient Langevin Dynamics

    Susanna Lange, Wei Deng, Qiang Ye, Guang Lin
    2024-03-21
    33456 4315 Pages:65-82 Open-access
  • Stochastic Delay Differential Games: Financial Modeling and Machine Learning Algorithms

    Robert Balkin, Hector D. Ceniceros, Ruimeng Hu
    2024-03-21
    26108 2711 Pages:23-63 Open-access
  • Variational Formulations of ODE-Net as a Mean-Field Optimal Control Problem and Existence Results

    Noboru Isobe, Mizuho Okumura
    2024-11-07
    17621 2016 Pages:413-444 Open-access
  • Embedding Principle: A Hierarchical Structure of Loss Landscape of Deep Neural Networks

    Yaoyu Zhang, Yuqing Li, Zhongwang Zhang, Tao Luo, Zhi-Qin John Xu
    2024-03-21
    80348 4413 Pages:60-113 Open-access
  • Interpolating Between BSDEs and PINNs: Deep Learning for Elliptic and Parabolic Boundary Value Problems

    Nikolas Nüsken, Lorenz Richter
    2024-03-21
    35999 4570 Pages:31-64 Open-access
  • Enhancing Accuracy in Deep Learning Using Random Matrix Theory

    Leonid Berlyand, Etienne Sandier, Yitzchak Shmalo, Lei Zhang
    2024-11-07
    18826 2352 Pages:347-412 Open-access
  • Convergence of Stochastic Gradient Descent under a Local Łojasiewicz Condition for Deep Neural Networks

    Jing An, Jianfeng Lu
    2025-06-03
    8323 752 Pages:89-107 Open-access
  • Progressive Optimal Path Sampling for Closed-Loop Optimal Control Design with Deep Neural Networks

    Xuanxi Zhang, Jihao Long, Wei Hu, Weinan E, Jiequn Han
    2025-10-31
    478 115
  • A Multimodal PDE Foundation Model for Prediction and Scientific Text Descriptions

    Elisa Negrini, Yuxuan Liu, Liu Yang, Stanley J. Osher, Hayden Schaeffer
    2025-11-14
    118 12
  • Optimistic Estimate Uncovers the Potential of Nonlinear Models

    Yaoyu Zhang, Zhongwang Zhang, Leyang Zhang, Zhiwei Bai, Tao Luo, Zhi-Qin John Xu
    2025-09-12
    22843 270 Pages:192-222 Open-access
1 - 13 of 13 items
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