The core message of this paper is to develop a reinforcement learning framework that learns policies that maximize reward while minimizing the disclosure of sensitive state variables through the agent's actions.
PAPER-HILT develops an adaptive RL strategy for privacy preservation in HITL environments, balancing privacy and utility effectively.
PAPER-HILT develops an adaptive RL strategy for privacy preservation in HITL environments, balancing privacy protection and system utility.
The authors introduce PAPER-HILT, an adaptive RL strategy designed for privacy preservation in HITL environments, balancing privacy protection and system utility based on individual behavioral patterns.