社会网络分析
计算机科学
工作流程
过程(计算)
探索性分析
学习分析
探索性研究
分析
知识管理
可视化
数据科学
社交网络(社会语言学)
意会
学习管理
在线社区
计算社会学
过程管理
社会学习
心理学
探索性数据分析
作者
Jui-Long Hung,Yeye Tang,Xu Du,Hao Li,Min Deng
标识
DOI:10.1108/idd-04-2025-0100
摘要
Purpose This study aims to explore the potential of Multi-Agent Large Language Models (MALLM) to enhance Social Network Analysis (SNA) for online education. It compares MALLM with single-agent LLMs in conducting, interpreting and applying SNA, addressing barriers that limit adoption. Design/methodology/approach An exploratory experiment using AutoGen compared MALLM and single-agent LLMs across multistep SNA workflows with a Coursera discussion data set. The process included data exploration, analysis and visualization. Specialized agent teams were assigned to analysis and interpretation. Performance was tested over 20 rounds, evaluated on comprehension, accuracy, execution and educational relevance. Findings Single agents were more efficient in simpler tasks (data exploration 85% vs 25%, visualization 50% vs 45%). MALLM outperformed in complex tasks, with higher SNA precision (30% vs 25%), stronger node-level analysis (95% vs 65%) and greater educational insights (55% vs 35%). However, MALLM faced coordination inefficiencies in linear tasks. Research limitations/implications Limitations include contextual forgetting, token-size constraints and coordination overhead. Results are specific to GPT-4/GPT-4o, with a 30% success rate in complex tasks, indicating LLMs are not yet sufficient for full automation. Practical implications MALLMs can advance online education by supporting personalized learning and engagement while democratizing access to advanced analytics and pedagogical feedback, thereby enhancing educational equity. Originality/value To the best of the authors’ knowledge, this study is among the first to examine MALLMs’ management of multimodal, domain-specific analytics tasks, moving beyond general text-based applications, highlighting their advantages in generating educational insights and informing agent design while providing benchmarks for advancing multi-agent LLM systems.
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