Ny Hasina Andriambelo
Privacy-Preserving Knowledge Graph Sharing in Peer-to-Peer Decentralized Federated Learning for Connected Autonomous Vehicles
Andriambelo, Ny Hasina; Moradpoor, Naghmeh
Abstract
We present a decentralized framework that enables privacypreserving knowledge graph sharing and robust federated learning among Connected Autonomous Vehicles (CAVs), without relying on trusted coordinators. Each vehicle constructs a local semantic graph from environmental observations, privatized through randomized encoding and ephemeral encryption to preserve sensitive relationships. Model updates are secured by Binius-based Zero-Knowledge Proofs (ZKPs), providing lightweight, non-interactive cryptographic verification of update integrity. A lightweight blockchain anchors proof commitments for tamperresistance, while decentralized reputation scores adaptively filter participants based on verifiable trustworthiness. Empirical evaluations with N = 100 nodes, including 20% malicious actors, show that our framework reduces poisoning attack success rates from 69.94% (standard FL) to 65.15%, with less than 1.5% degradation in final model accuracy. Proof generation and verification incur only 0.123 seconds per update, and communication overhead grows modestly from 35 KB to 45 KB per round—remaining fully compatible with 5G vehicular networks. Knowledge graph membership inference attacks succeed with probability below 0.5% even under auxiliary knowledge assumptions. An ablation study confirms that resilience arises from the interplay of cryptographic validation, behavioral verification, and adaptive trust management. Our results demonstrate that secure, verifiable, and privacy-preserving decentralized semantic learning is practically achievable at scale for intelligent transportation systems, paving the way for safer and more trustworthy autonomous collaboration in adversarial environments.
Citation
Andriambelo, N. H., & Moradpoor, N. (2025, August). Privacy-Preserving Knowledge Graph Sharing in Peer-to-Peer Decentralized Federated Learning for Connected Autonomous Vehicles. Presented at ARES '25: 20th International Conference on Availability, Reliability and Security, Ghent, Belgium
Presentation Conference Type | Conference Paper (published) |
---|---|
Conference Name | ARES '25: 20th International Conference on Availability, Reliability and Security |
Start Date | Aug 11, 2025 |
End Date | Aug 14, 2025 |
Acceptance Date | May 31, 2025 |
Deposit Date | Jun 2, 2025 |
Peer Reviewed | Peer Reviewed |
Keywords | Decentralized Federated Learning, Connected Autonomous Vehicles, Privacy-Preserving Knowledge Graphs, Zero-Knowledge Proofs, Blockchain, Robust Aggregation |
Public URL | http://researchrepository.napier.ac.uk/Output/4559183 |
Publisher URL | https://dl.acm.org/conference/ares/proceedings |
Related Public URLs | https://2025.ares-conference.eu/ |
This file is under embargo due to copyright reasons.
Contact repository@napier.ac.uk to request a copy for personal use.
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