The paper focuses on developing a personalized approach to privacy-aware reinforcement learning in human-in-the-loop systems. It addresses the challenge of balancing privacy concerns with system utility by introducing an innovative early-exit strategy. The study evaluates the effectiveness of PAPER-HILT in Smart Home environments and Virtual Reality Smart Classrooms, showcasing its capability to provide a personalized equilibrium between user privacy and application utility.
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arxiv.org
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