Wonder Wins Ways: Curiosity-Driven Exploration through Multi-Agent Contextual Calibration

Neural Information Processing Systems 

Autonomous exploration in complex multi-agent reinforcement learning (MARL) with sparse rewards critically depends on providing agents with effective intrinsic motivation. While artificial curiosity offers a powerful self-supervised signal, it often confuses environmental stochasticity with meaningful novelty.

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