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arxiv:2403.10112

Single- and Multi-Agent Private Active Sensing: A Deep Neuroevolution Approach

Published on Mar 15, 2024
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Abstract

The paper introduces a NeuroEvolution-based framework for active hypothesis testing in both centralized and decentralized settings, demonstrating its superiority over traditional methods in anomaly detection tasks.

AI-generated summary

In this paper, we focus on one centralized and one decentralized problem of active hypothesis testing in the presence of an eavesdropper. For the centralized problem including a single legitimate agent, we present a new framework based on NeuroEvolution (NE), whereas, for the decentralized problem, we develop a novel NE-based method for solving collaborative multi-agent tasks, which interestingly maintains all computational benefits of single-agent NE. The superiority of the proposed EAHT approaches over conventional active hypothesis testing policies, as well as learning-based methods, is validated through numerical investigations in an example use case of anomaly detection over wireless sensor networks.

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