DECML: Distributed Edge Consensus Machine Learning Framework

Cyrile Verdeyen, Carlton Shepherd, Konstantinos Markantonakis, Raja Naeem Akram, Roger Milroy, Sarah Abu Ghazalah, Damien Sauveron

Research output: Chapter in Book/Report/Conference proceedingConference contribution

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Abstract

The increasing reliance on interdependent data-driven services in the Internet of Things (IoT), smart homes, and Industry 4.0 is hindered by siloed security and privacy measures. Existing solutions like federated learning and distributed machine learning, with their various approaches such as differential privacy and homomorphic encryption, while promising, face challenges in ensuring robust security and privacy. We introduce Distributed Edge Consensus Machine Learning (DECML), a novel framework that enables secure, privacy-preserving insights sharing among multiple stakeholders without exposing underlying data or models. DECML distributes queries and aggregates responses through independent nodes, achieving accuracy comparable to local deployments with minimal added latency. Our evaluation, using standard datasets and a 20-node network, demonstrates DECML's potential for collaborative decision-making without compromising privacy. This has significant implications for domains such as cybersecurity, healthcare
Original languageEnglish
Title of host publicationIEEE Xplore
Publication statusPublished - Nov 2024

Keywords

  • Machine Learning
  • Edge Computing
  • Distributed Computing
  • Data Privacy

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