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Model-free Legibility: Enhancing Human-Robot Interactions through Implicit Communication and Influence Modulation (2406.12253v1)

Published 18 Jun 2024 in cs.RO

Abstract: Communication is essential for successful interaction. In human-robot interaction, implicit communication enhances robots' understanding of human needs, emotions, and intentions. This paper introduces a method to foster implicit communication in HRI without explicitly modeling human intentions or relying on pre-existing knowledge. Leveraging Transfer Entropy, we modulate influence between agents in social interactions in scenarios involving either collaboration or competition. By integrating influence into agents' rewards within a partially observable Markov decision process, we demonstrate that boosting influence enhances collaboration or competition performance, while resisting influence diminishes performance. Our findings are validated through simulations and real-world experiments with human participants.

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Authors (3)
  1. Haoyang Jiang (5 papers)
  2. Elizabeth A. Croft (8 papers)
  3. Michael G. Burke (4 papers)

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