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Polarisation assessment in an intelligent argumentation system using fuzzy clustering algorithm for collaborative decision support

机译:使用模糊聚类算法的智能论证系统中的极化评估以提供协作决策支持

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We developed an on-line intelligent argumentation system which facilitates stakeholders in exchanging dialogues. It provides decision support by capturing stakeholders' rationale through arguments. As part of the argumentation process, stakeholders tend to both polarise their opinions and form polarisation groups. The challenging issue of assessing argumentation polarisation had not been addressed in argumentation systems until recently. Arvapally, Liu, and Jiang [(2012), 'Identification of Faction Groups and Leaders in Web-Based Intelligent Argumentation System for Collaborative Decision Support', in Proceedings of International Conference on Collaborative Technologies and Systems] earlier developed a method to identify polarisation groups. These groups, however, tend to overlap to a certain degree; each stakeholder may be a member of multiple polarisation groups to varied degrees. Quantifying stakeholders' membership in multiple polarisation groups is an important issue in the argumentation for collaborative decision-making, which is not addressed earlier. We present a novel approach using fuzzy clustering algorithm to address this issue in this article. The method is evaluated using data sets produced from the discussions of 24 stakeholders. Experimental results indicate that our method is effective for both identifying polarisation groups and quantifying stakeholders' degree of membership in each polarisation group.
机译:我们开发了一种在线智能论证系统,可帮助利益相关者交流对话。它通过争论来获取利益相关者的理由,从而提供决策支持。作为论证过程的一部分,利益相关者往往会极化他们的意见并形成极化小组。直到最近,在争论系统中才解决了评估争论两极分化这一具有挑战性的问题。 Arvapally,Liu和Jiang [(2012),“基于Web的用于协作决策支持的智能论证系统中的派系组和领导者的识别”,在国际协作技术和系统会议的会议录中]较早地开发了一种识别极化组的方法。但是,这些群体在一定程度上倾向于重叠。每个利益相关者在不同程度上可能是多个极化小组的成员。量化利益相关者在多个两极分化群体中的成员资格是进行协作决策的一个重要问题,这在前面没有解决。在本文中,我们提出了一种使用模糊聚类算法解决此问题的新颖方法。使用从24个利益相关者的讨论中产生的数据集来评估该方法。实验结果表明,我们的方法对于识别极化组和量化利益相关者在每个极化组中的隶属度都是有效的。

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