基于语义丰富的推文事件分类实验

Simone Aparecida Pinto Romero, Karin Becker
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引用次数: 4

摘要

Twitter已经成为让人们了解现实世界事件的关键,但识别与事件相关的帖子不仅仅是过滤关键字。语义丰富利用知识来源,如链接开放数据(LOD)云,已被提出,以处理推文的文本内容差的事件分类。然而,每个工作都考虑一种特定类型的事件,并根据应用程序的目的进行特定的假设。为了寻找适合不同类型事件的方法,本文识别了不同类型的语义特征,并提出了一种语义丰富的过程,该过程包括将文本标记映射到语义概念,从LOD云中提取相应的语义属性,并将其插值到事件分类中。我们使用代表不同性质事件的不同tweet数据集和从DBPedia中提取的知识来评估每种语义特征的贡献。
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Experiments with Semantic Enrichment for Event Classification in Tweets
Twitter has become key for bringing awareness about real-world events, but the identification of event related posts goes beyond filtering keywords. Semantic enrichment using knowledge sources such as the Linked Open Data (LOD) cloud, has been proposed to deal with the poor textual contents of tweets for event classification. However, each work considers a particular type of event, underlined by specific assumptions according to the application purpose. In a search for an approach that suits different types of events, in this paper we identify different types of semantic features, and propose a process for semantic enrichment that involves the mapping of textual tokens into semantic concepts, the extraction of corresponding semantic properties from the LOD cloud, and their interpolation for event classification. We evaluate the contribution of each type of semantic feature using different tweet datasets representing events of distinct natures, and knowledge extracted from DBPedia.
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