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