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Main Authors: He, Xiangyang, Li, Jiale, Chen, Jiahao, Yang, Yang, Fan, Mingming
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.16010
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author He, Xiangyang
Li, Jiale
Chen, Jiahao
Yang, Yang
Fan, Mingming
author_facet He, Xiangyang
Li, Jiale
Chen, Jiahao
Yang, Yang
Fan, Mingming
contents Panel discussion allows the audience to learn different perspectives through interactive discussions among experts moderated by a host and a Q&A session with the audience. Despite its benefits, panel discussion in the real world is inaccessible to many who do not have the privilege to participate due to geographical, financial, and time constraints. We present SimuPanel, which simulates panel discussions among academic experts through LLM-based multi-agent interaction. It enables users to define topics of interest for the panel, observe the expert discussion, engage in Q&A, and take notes. SimuPanel employs a host-expert architecture where each panel member is simulated by an agent with specialized expertise, and the panel is visualized in an immersive 3D environment to enhance engagement. Traditional dialogue generation struggles to capture the depth and interactivity of real-world panel discussions. To address this limitation, we propose a novel multi-agent interaction framework that simulates authentic panel dynamics by modeling reasoning strategies and personas of experts grounded in multimedia sources. This framework enables agents to dynamically recall and contribute to the discussion based on past experiences from diverse perspectives. Our technical evaluation and the user study with university students show that SimuPanel was able to simulate more in-depth discussions and engage participants to interact with and reflect on the discussions. As a first step in this direction, we offer design implications for future avenues to improve and harness the power of panel discussion for multimedia learning.
format Preprint
id arxiv_https___arxiv_org_abs_2506_16010
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SimuPanel: A Novel Immersive Multi-Agent System to Simulate Interactive Expert Panel Discussion
He, Xiangyang
Li, Jiale
Chen, Jiahao
Yang, Yang
Fan, Mingming
Human-Computer Interaction
Panel discussion allows the audience to learn different perspectives through interactive discussions among experts moderated by a host and a Q&A session with the audience. Despite its benefits, panel discussion in the real world is inaccessible to many who do not have the privilege to participate due to geographical, financial, and time constraints. We present SimuPanel, which simulates panel discussions among academic experts through LLM-based multi-agent interaction. It enables users to define topics of interest for the panel, observe the expert discussion, engage in Q&A, and take notes. SimuPanel employs a host-expert architecture where each panel member is simulated by an agent with specialized expertise, and the panel is visualized in an immersive 3D environment to enhance engagement. Traditional dialogue generation struggles to capture the depth and interactivity of real-world panel discussions. To address this limitation, we propose a novel multi-agent interaction framework that simulates authentic panel dynamics by modeling reasoning strategies and personas of experts grounded in multimedia sources. This framework enables agents to dynamically recall and contribute to the discussion based on past experiences from diverse perspectives. Our technical evaluation and the user study with university students show that SimuPanel was able to simulate more in-depth discussions and engage participants to interact with and reflect on the discussions. As a first step in this direction, we offer design implications for future avenues to improve and harness the power of panel discussion for multimedia learning.
title SimuPanel: A Novel Immersive Multi-Agent System to Simulate Interactive Expert Panel Discussion
topic Human-Computer Interaction
url https://arxiv.org/abs/2506.16010