Exploring the Impact of Non-Verbal Virtual Agent Behavior on User Engagement in Argumentative Dialogues
November 17, 2024 Β· Declared Dead Β· π International Conference on Human-Agent Interaction
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Authors
Annalena Bea Aicher, Yuki Matsuda, Keichii Yasumoto, Wolfgang Minker, Elisabeth AndrΓ©, Stefan Ultes
arXiv ID
2411.11102
Category
cs.HC: Human-Computer Interaction
Citations
3
Venue
International Conference on Human-Agent Interaction
Last Checked
4 months ago
Abstract
Engaging in discussions that involve diverse perspectives and exchanging arguments on a controversial issue is a natural way for humans to form opinions. In this process, the way arguments are presented plays a crucial role in determining how engaged users are, whether the interaction takes place solely among humans or within human-agent teams. This is of great importance as user engagement plays a crucial role in determining the success or failure of cooperative argumentative discussions. One main goal is to maintain the user's motivation to participate in a reflective opinion-building process, even when addressing contradicting viewpoints. This work investigates how non-verbal agent behavior, specifically co-speech gestures, influences the user's engagement and interest during an ongoing argumentative interaction. The results of a laboratory study conducted with 56 participants demonstrate that the agent's co-speech gestures have a substantial impact on user engagement and interest and the overall perception of the system. Therefore, this research offers valuable insights for the design of future cooperative argumentative virtual agents.
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