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Ain't Misbehavin' - Using LLMs to Generate Expressive Robot Behavior in Conversations with the Tabletop Robot Haru

Zining Wang, Paul Reisert, Eric Nichols, Randy Gómez

Year
2024
Citations
13
Access
Open access

Abstract

Social robots aim to establish long-term bonds with humans through engaging conversation. However, traditional conversational approaches, reliant on scripted interactions, often fall short in maintaining engaging conversations. This paper addresses this limitation by integrating large language models (LLMs) into social robots to achieve more dynamic and expressive conversations.

Keywords

ConversationRobotComputer scienceSocial robotHuman–computer interactionArtificial intelligenceMobile robotPsychologyCommunicationRobot control

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