Hierarchical Social Network Analysis Using a Multi-Agent System: A School System Case

Lizhu Ma, Xin Zhang
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引用次数: 7

Abstract

The quality of K-12 education has been a major concern in the nation for years. School systems, just like many other social networks, appear to have a hierarchical structure. Understanding this structure could be the key to better evaluating student performance and improving school quality. Many studies have been focusing on detecting hierarchical structure by using hierarchical clustering algorithms. The authors design an interaction-based similarity measure to accomplish hierarchical clustering in order to detect hierarchical structures in social networks e.g. school district networks. This method uses a multi-agent system, for it is based on agent interactions. With the network structure detected, they also built a model, which is based on the MAXQ algorithm, to decompose the funding policy task into subtasks and then evaluate these subtasks by using funding distribution policies from past years and looking for possible relationships between student performances and funding policies. For the experiment, the authors used real school data from Bexar county's 15 school districts in Texas. The first result shows that their interaction-based method is able to generate meaningful clustering and dendrograms for social networks. Additionally the authors' policy evaluation model is able to evaluate funding policies from the past three years in Bexar County and conclude that increasing funding does not necessarily have a positive impact on student performance and it is generally not the case that the more is spent, the better.
基于多智能体系统的分层社会网络分析:一个学校系统案例
多年来,K-12教育的质量一直是美国关注的主要问题。学校系统,就像许多其他社会网络一样,似乎有一个等级结构。了解这种结构可能是更好地评估学生表现和提高学校质量的关键。许多研究都集中在利用层次聚类算法检测层次结构上。作者设计了一种基于交互的相似性度量来实现分层聚类,以检测社会网络中的分层结构,例如学区网络。该方法使用多智能体系统,因为它是基于智能体交互的。在检测到网络结构的基础上,他们还建立了一个基于MAXQ算法的模型,将资助政策任务分解为子任务,然后利用过去几年的资助分配政策对这些子任务进行评估,寻找学生成绩与资助政策之间可能存在的关系。在实验中,作者使用了德克萨斯州贝尔县15个学区的真实学校数据。第一个结果表明,他们基于交互的方法能够为社交网络生成有意义的聚类和树形图。此外,作者的政策评估模型能够评估贝尔县过去三年的资助政策,并得出结论,增加资助并不一定对学生的表现产生积极影响,通常情况下并不是花得越多越好。
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