Reinforce Security: A Model-Free Approach towards Secure Wiretap Coding

Research output: Contribution to book/Conference proceedings/Anthology/ReportConference contributionContributedpeer-review

Contributors

  • Rick Fritschek - , Free University of Berlin (Author)
  • Rafael F. Schaefer - , University of Siegen (Author)
  • Gerhard Wunder - , Free University of Berlin (Author)

Abstract

The use of deep learning-based techniques for approximating secure encoding functions has attracted considerable interest in wireless communications due to impressive results obtained for general coding and decoding tasks for wireless communication systems. Of particular importance is the development of model-free techniques that work without knowledge about the underlying channel. Such techniques utilize for example generative adversarial networks to estimate and model the conditional channel distribution, mutual information estimation as a reward function, or reinforcement learning. In this paper, the approach of reinforcement learning is studied and, in particular, the policy gradient method for a model-free approach of neural network-based secure encoding is investigated. Previously developed techniques for enforcing a certain co-set structure on the encoding process can be combined with recent reinforcement learning approaches. This new approach is evaluated by extensive simulations, and it is demonstrated that the resulting decoding performance of an eavesdropper is capped at a certain error level.

Details

Original languageEnglish
Title of host publicationICC 2021 - IEEE International Conference on Communications, Proceedings
PublisherInstitute of Electrical and Electronics Engineers Inc.
Pages1-6
ISBN (electronic)978-1-7281-7122-7
Publication statusPublished - Jun 2021
Peer-reviewedYes
Externally publishedYes

Publication series

SeriesIEEE International Conference on Communications (ICC)
ISSN1550-3607

Conference

Title2021 IEEE International Conference on Communications, ICC 2021
Duration14 - 23 June 2021
CityVirtual, Online
CountryCanada

External IDs

ORCID /0000-0002-1702-9075/work/165878256