使用自动扩展知识库从社交媒体识别和断言事件

A. Suliman, Khaled Al Kaabi, Di Wang, Ahmad Al-Rubaie, Ahmed Al Dhanhani, D. Ruta, John Davies, Sandra Stincic
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引用次数: 9

摘要

社交媒体已经成为一个重要的数据来源,可以提供近乎即时的信息,这些信息可以通过分析生成预测模型并支持决策。在短信分析方面已经做了大量的工作,如趋势分析、短信分类等。然而,从所有相关信息中得出准确而简洁的结论/断言仍然具有挑战性。本文提出了一种从“词/术语”和“概念”两个层面对微博信息进行分析的方法,以准确、快速地生成断言。为了分析概念层次,我们定义了一个小的种子本体,它是现有本体的半自动生成的扩展。通过这样做,我们既实现了准确的断言,又避免了手动定义整个知识库的昂贵开销。然后,我们使用该方法从微博流中进行流量断言,以证明该方法的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Event identification and assertion from social media using auto-extendable knowledge base
Social media have become an important source of data and can provide near-instantaneous information which can be analysed to generate predictive models and to support decision making. Much work has been done in short message analysis such as trend analysis, short message classification, etc. However, to generate an accurate and concise conclusion/assertion from all the relevant information remains challenging. In this paper we propose a method to analyse microblog messages at both `word/term' level and `concept' level to generate assertions accurately and instantly. To analyse the concept level, we define a small seed ontology which is a semi-automatically generated extension of an existing ontology. By doing this we achieve both accurate assertions and avoid the costly overhead of defining the whole knowledgebase manually. We then use the proposed method to make traffic assertions from a microblog stream to demonstrate the advantages of the approach.
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