Anomalous Client Detection in Federated Learning
Dipanwita Thakur, Antonella Guzzo, Giancarlo Fortino

TL;DR
This paper introduces an anomaly detection algorithm for federated learning that identifies malicious or malfunctioning clients, improving security and convergence efficiency by reducing communication rounds.
Contribution
The paper proposes a novel anomaly client detection method that replaces random client selection, enhancing security and convergence in federated learning.
Findings
Reduces communication rounds by nearly 50% with the proposed method.
Improves global model convergence in federated learning.
Enhances security by detecting and removing malicious clients.
Abstract
Federated learning (FL), with the growing IoT and edge computing, is seen as a promising solution for applications that are latency- and privacy-aware. However, due to the widespread dispersion of data across many clients, it is challenging to monitor client anomalies caused by malfunctioning devices or unexpected events. The majority of FL solutions now in use concentrate on the classification problem, ignoring situations in which anomaly detection may also necessitate privacy preservation and effectiveness. The system in federated learning is unable to manage the potentially flawed behavior of its clients completely. These behaviors include sharing arbitrary parameter values and causing a delay in convergence since clients are chosen at random without knowing the malfunctioning behavior of the client. Client selection is crucial in terms of the efficiency of the federated learning…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Network Security and Intrusion Detection · Internet Traffic Analysis and Secure E-voting
