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2023 IEEE 20th International Conference on Mobile Ad Hoc and Smart Systems (MASS) : Toronto, Canada, 25-27 September 2023 : proceedings / Institute of Electrical and Electronics Engineers.

IEEE Xplore (IEEE/IET Electronic Library - IEL) Available online

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Format:
Book
Author/Creator:
Institute of Electrical and Electronics Engineers, author, issuing body.
Language:
English
Subjects (All):
Ad hoc networks (Computer networks)--Congresses.
Ad hoc networks (Computer networks).
Expert systems (Computer science)--Congresses.
Expert systems (Computer science).
Physical Description:
1 online resource
Place of Publication:
Piscataway, NJ : IEEE, 2023.
Summary:
With the emergence of data silos and increasing privacy awareness, traditional centralized machine learning provides limited support. Federated learning (FL), as a promising alternative machine learning approach, is capable of leveraging distributed personalized datasets from multiple clients to train a shared global model in a privacy-preserving manner. However, FL systems are vulnerable to attacker-controlled adversarial clients that potentially conduct adversarial attacks by uploading unreliable model updates or clients unintentionally uploading low-quality models leading to degraded FL performance and reduced resilience to attacks. In this paper, we propose RAFL: a new robust-by-design federated meta learning framework capable of mitigating adversarial model updates on non-IID data. RAFL leverages 1 a residual rule-based detection method and a Variational AutoEncoder (VAE) learning based detection method combined to distinguish adversarial clients from benign clients. 2 a similarity-based model aggregation method to reduce the likelihood of uploading adversarial models from adversarial clients. 3 multiple learning loops to collaboratively train multiple personalized detection models against adversaries effectively. Experimental results demonstrate that our proposed FL framework is robust by design and outperforms other defensive methods against adversaries in terms of model accuracy and efficiency.
Contents:
Title Page I
Title Page III
Copyright
Table of Contents
Message from the General Chairs
Message from the Program Chairs
Message from the SLICE-2023 General Chair
Message from the UAV-IoT Workshop Chairs
5G multi-numerology applications in power distribution systems
Ad-hoc Coalition Set Formation among Directional Radios
DGR: Delay-Guaranteed Routing Protocol
Digital Twin-assisted Reinforcement Learning for Resource-aware Microservice Offloading in Edge Computing.
Notes:
Description based on publisher supplied metadata and other sources.
ISBN:
9798350324334

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