Behavioral and Symbolic Fillers as Delay Mitigation for Embodied Conversational Agents in Virtual Reality
August 15, 2025 Β· Declared Dead Β· π IEEE Transactions on Visualization and Computer Graphics
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Authors
Denmar Mojan Gonzales, Snehanjali Kalamkar, Sophie JΓΆrg, Jens Grubert
arXiv ID
2508.11781
Category
cs.HC: Human-Computer Interaction
Citations
1
Venue
IEEE Transactions on Visualization and Computer Graphics
Last Checked
4 months ago
Abstract
When communicating with embodied conversational agents (ECAs) in virtual reality, there might be delays in the responses of the agents lasting several seconds, for example, due to more extensive computations of the answers when large language models are used. Such delays might lead to unnatural or frustrating interactions. In this paper, we investigate filler types to mitigate these effects and lead to a more positive experience and perception of the agent. In a within-subject study, we asked 24 participants to communicate with ECAs in virtual reality, comparing four strategies displayed during the delays: a multimodal behavioral filler consisting of conversational and gestural fillers, a base condition with only idle motions, and two symbolic indicators with progress bars, one embedded as a badge on the agent, the other one external and visualized as a thinking bubble. Our results indicate that the behavioral filler improved perceived response time, three subscales of presence, humanlikeness, and naturalness. Participants looked away from the face more often when symbolic indicators were displayed, but the visualizations did not lead to a more positive impression of the agent or to increased presence. The majority of participants preferred the behavioral fillers, only 12.5% and 4.2% favored the symbolic embedded and external conditions, respectively.
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