从在线资源获取事件的语义上下文

João Oliveirinha, Francisco C. Pereira, A. Alves
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引用次数: 2

摘要

在过去的几年里,关于地点及其动态的在线描述性信息的数量已经达到了世界上许多城市的合理规模。这种丰富的信息现在可以支持空间的语义分析,特别是关于那里存在的东西和那里发生的事情。我们提出了一种方法,可以根据在那里发生的事件自动标记地点。为了实现这一点,我们使用了应用于在线Web 2.0资源(如Zvents和Boston Calendar)的信息提取技术。维基百科也被用作一种资源,在语义上丰富最初提取的标记向量。我们描述了获得这些语义向量的过程,给出了实验分析结果,并使用Amazon Mechanical Turk和一组算法验证了这些结果。最后,我们讨论了该方法的优点和缺点。
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Acquiring semantic context for events from online resources
During the last few years, the amount of online descriptive information about places and their dynamics has reached reasonable dimension for many cities in the world. Such enriched information can now support semantic analysis of space, particularly in which respects to what exists there and what happens there. We present a methodology to automatically label places according to events that happen there. To achieve this we use Information Extraction techniques applied to online Web 2.0 resources such as Zvents and Boston Calendar. Wikipedia is also used as a resource to semantically enrich the tag vectors initially extracted. We describe the process by which these semantic vectors are obtained, present results of experimental analysis, and validated these with Amazon Mechanical Turk and a set of algorithms. To conclude, we discuss the strengths and weaknesses of the methodology.
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