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Simplicial-Map Neural Networks Robust to Adversarial Examples

Author

Listed:
  • Eduardo Paluzo-Hidalgo

    (Department of Applied Mathematics I, University of Seville, 41012 Seville, Spain
    These authors are partially supported by MICINN, FEDER/UE under grant PID2019-107339GB-100.)

  • Rocio Gonzalez-Diaz

    (Department of Applied Mathematics I, University of Seville, 41012 Seville, Spain
    These authors are partially supported by MICINN, FEDER/UE under grant PID2019-107339GB-100.
    These authors contributed equally to this work.)

  • Miguel A. Gutiérrez-Naranjo

    (Department of Computer Sciences and Artificial Intelligence, University of Seville, 41012 Seville, Spain
    These authors are partially supported by MICINN, FEDER/UE under grant PID2019-107339GB-100.
    These authors contributed equally to this work.)

  • Jónathan Heras

    (Department of Mathematics and Computer Sciences, University of La Rioja, 26006 Logroño, Spain
    These authors contributed equally to this work.)

Abstract

Broadly speaking, an adversarial example against a classification model occurs when a small perturbation on an input data point produces a change on the output label assigned by the model. Such adversarial examples represent a weakness for the safety of neural network applications, and many different solutions have been proposed for minimizing their effects. In this paper, we propose a new approach by means of a family of neural networks called simplicial-map neural networks constructed from an Algebraic Topology perspective. Our proposal is based on three main ideas. Firstly, given a classification problem, both the input dataset and its set of one-hot labels will be endowed with simplicial complex structures, and a simplicial map between such complexes will be defined. Secondly, a neural network characterizing the classification problem will be built from such a simplicial map. Finally, by considering barycentric subdivisions of the simplicial complexes, a decision boundary will be computed to make the neural network robust to adversarial attacks of a given size.

Suggested Citation

  • Eduardo Paluzo-Hidalgo & Rocio Gonzalez-Diaz & Miguel A. Gutiérrez-Naranjo & Jónathan Heras, 2021. "Simplicial-Map Neural Networks Robust to Adversarial Examples," Mathematics, MDPI, vol. 9(2), pages 1-16, January.
  • Handle: RePEc:gam:jmathe:v:9:y:2021:i:2:p:169-:d:480848
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