Strength in coalitions: Community detection through argument similarity

P. D. Budan, Melisa Gisselle Escañuela Gonzalez, M. C. Budán, Maria Vanina Martinez, Guillermo R. Simari
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Abstract

We present a novel argumentation-based method for finding and analyzing communities in social media on the Web, where a community is regarded as a set of supported opinions that might be in conflict. Based on their stance, we identify argumentative coalitions to define them; then, we apply a similarity-based evaluation method over the set of arguments in the coalition to determine the level of cohesion inherent to each community, classifying them appropriately. Introducing conflict points and attacks between coalitions based on argumentative (dis)similarities to model the interaction between communities leads to considering a meta-argumentation framework where the set of coalitions plays the role of the set of arguments and where the attack relation between the coalitions is assigned a particular strength which is inherited from the arguments belonging to the coalition. Various semantics are introduced to consider attacks’ strength to particularize the effect of the new perspective. Finally, we analyze a case study where all the elements of the formal construction of the formalism are exercised.
联盟中的力量:通过论点相似度进行社区检测
我们提出了一种新颖的基于论证的方法,用于发现和分析网络社交媒体中的社区,其中社区被视为一组可能存在冲突的支持意见。根据他们的立场,我们识别争论联盟来定义他们;然后,我们对联盟中的参数集应用基于相似性的评估方法来确定每个社区固有的内聚水平,并对它们进行适当的分类。引入基于论证(非)相似性的联盟之间的冲突点和攻击来模拟社区之间的相互作用,导致考虑一个元论证框架,其中联盟集扮演论证集的角色,其中联盟之间的攻击关系被赋予特定的强度,该强度继承自属于联盟的论证。引入了各种语义来考虑攻击的强度,以使新视角的效果具体化。最后,我们分析了一个案例研究,在这个案例中,形式主义的形式建构的所有要素都得到了实践。
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