DCLGJul 30, 2025

Low-Communication Resilient Distributed Estimation Algorithm Based on Memory Mechanism

arXiv:2508.02705v1h-index: 32025 IEEE/CIC International Conference on Communications in China (ICCC Workshops)
Originality Incremental advance
AI Analysis

This addresses the challenge of resilient distributed estimation in adversarial networks, which is incremental as it builds on existing methods with specific improvements.

The paper tackles the problem of accurate parameter estimation in multi-task adversarial networks with attacked nodes or links by proposing a low-communication resilient distributed estimation algorithm, achieving superior performance with less communication cost compared to other algorithms.

In multi-task adversarial networks, the accurate estimation of unknown parameters in a distributed algorithm is hindered by attacked nodes or links. To tackle this challenge, this brief proposes a low-communication resilient distributed estimation algorithm. First, a node selection strategy based on reputation is introduced that allows nodes to communicate with more reliable subset of neighbors. Subsequently, to discern trustworthy intermediate estimates, the Weighted Support Vector Data Description (W-SVDD) model is employed to train the memory data. This trained model contributes to reinforce the resilience of the distributed estimation process against the impact of attacked nodes or links. Additionally, an event-triggered mechanism is introduced to minimize ineffective updates to the W-SVDD model, and a suitable threshold is derived based on assumptions. The convergence of the algorithm is analyzed. Finally, simulation results demonstrate that the proposed algorithm achieves superior performance with less communication cost compared to other algorithms.

Foundations

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