An ontology-driven perspective on the emotional human reactions to social events

Danilo Cavaliere, S. Senatore
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引用次数: 1

Abstract

Social media has become a fulcrum for sharing information on everyday-life events: people, companies, and organisations express opinions about new products, political and social situations, football matches, and concerts. The recognition of feelings and reactions to events from social networks requires dealing with great amounts of data streams, especially for tweets, to investigate the main sentiments and opinions that justify some reactions. This paper presents an emotion-based classification model to extract feelings from tweets related to an event or a trend, described by a hashtag, and build an emotional concept ontology to study human reactions to events in a context. From the tweet analysis, terms expressing a feeling are selected to build a topological space of emotion-based concepts. The extracted concepts serve to train a multi-class SVM classifier that is used to perform soft classification aimed at identifying the emotional reactions towards events. Then, an ontology allows arranging classification results, enriched with additional DBpedia concepts. SPARQL queries on the final knowledge base provide specific insights to explain people's reactions towards events. Practical case studies and test results demonstrate the applicability and potential of the approach.
从本体驱动的角度看人类对社会事件的情感反应
社交媒体已经成为分享日常生活事件信息的支点:个人、公司和组织表达对新产品、政治和社会形势、足球比赛和音乐会的看法。从社交网络中识别人们对事件的感受和反应,需要处理大量的数据流,尤其是推文,以调查证明某些反应的主要情绪和观点。本文提出了一种基于情感的分类模型,从推文中提取与事件或趋势相关的情感,用标签来描述,并构建情感概念本体来研究人类对事件的反应。从推文分析中选择表达情感的术语,构建基于情感的概念拓扑空间。提取的概念用于训练多类SVM分类器,该分类器用于执行旨在识别对事件的情绪反应的软分类。然后,本体允许安排分类结果,并通过附加的DBpedia概念进行丰富。最终知识库上的SPARQL查询提供了解释人们对事件的反应的具体见解。实际案例研究和测试结果证明了该方法的适用性和潜力。
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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