Identification of faction groups and leaders in Web-based intelligent argumentation system for collaborative decision support

Ravi Santosh Arvapally, Xiaoqing Frank Liu, Wei Jiang
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引用次数: 8

Abstract

Argumentation is an important and critical process in a collaborative decision making environment. Several argumentation frameworks and systems have been proposed for collaborative decision making earlier. However, limited decision support is provided to stakeholders. In an argumentation process, stakeholders tend to form groups, called faction groups based on their opinions and exchange of arguments. Each faction group is usually led by a faction leader in the group. Identification of faction groups and leaders in argumentation becomes an important challenge which has not been addressed adequately in the past. The faction assessment in argumentation provides the decision maker with more information about faction groups and their opinions towards the given issue and it helps the decision maker with logical and analytical competency to assess and analyze post-decision effects on each faction group and faction leaders, and make rational decisions. In this paper, we present a framework for identifying faction groups and faction leaders in an argumentation process using the K-means clustering algorithm. It is evaluated using a data set: an argumentation tree developed by a group of 24 stakeholders in an argumentation process using our web-based intelligent argumentation system for collaborative decision support. The experiment results show that the framework works effectively for faction assessment.
基于网络的协同决策支持智能论证系统中派系群体和领导者的识别
在协作决策环境中,论证是一个重要而关键的过程。先前已经提出了一些用于协作决策的论证框架和系统。然而,向利益相关者提供的决策支持有限。在辩论过程中,利益相关者倾向于根据他们的观点和论点的交换形成团体,称为派系团体。每个派系团体通常由一个派系领袖领导。在辩论中确定派系团体和领导人是一项重要的挑战,这在过去没有得到充分解决。论证中的派系评估为决策者提供了更多关于派系群体及其对给定问题的看法的信息,有助于决策者具备逻辑分析能力,评估和分析决策后对每个派系群体和派系领导人的影响,从而做出理性的决策。在本文中,我们提出了一个使用K-means聚类算法在论证过程中识别派别团体和派别领导人的框架。它是使用一个数据集进行评估的:一个由24个利益相关者在使用我们基于网络的智能论证系统进行协作决策支持的论证过程中开发的论证树。实验结果表明,该框架能够有效地进行派别评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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