A09 Regularizing neural network classification using random perturbations

Classification via trained deep neural networks is often very sensitive to adversarial noise on the input. We will investigate several approaches for increasing the robustness of deep learning models including randomized smoothing, randomness on the network parameters and constraints on the parameters during training. We aim at mathematical robustness guarantees. Furthermore, we will extend a new variant of stochastic gradient descent (multi-iteration stochastic estimator) recently introduced by PI Tempone for the training and will analyze its convergence properties.

Project Leaders
Postdoctoral Researcher
Doctoral Researcher

Publications

  • A09
    V. Hoang, S. Krumscheid, H. Rauhut, R. Tempone

    On the adversarial training of deep learning models

    Poster 2024

    bibtex publications.rwth-aachen.de

  • A09
    V. Hoang, S. Krumscheid, H. Rauhut, R. Tempone

    Regularizing neural network classification using random perturbation

    Conference Presentation 2023

    bibtex publications.rwth-aachen.de

  • A09
    V. Hoang, S. Krumscheid, H. Rauhut, R. Tempone

    Regularizing neural network classification using random perturbations

    Poster 2023

    bibtex publications.rwth-aachen.de