Identifying main topics in density-based spatial clusters using network-based representative document extraction

Tatsuhiro Sakai, Keiichi Tamura, H. Kitakami
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引用次数: 3

Abstract

Geo-tagged documents on social media are usually related to local topics and events. Extracting areas of interest associated with local “attractive” topics from geo-tagged documents is one of the most important challenges in many application domains. In this paper, we propose a novel method for extracting the areas of interest from geo-tagged documents. There are two main steps in the proposed method. First, the (ε, σ)-density-based adaptive spatial clustering algorithm extracts areas where local topics are attracting attention as spatial clusters. Second, representative geo-tagged documents are detected to identify the main topic in each spatial cluster. The (ε, σ)-density-based adaptive spatial clustering algorithm changes the threshold for seamlessly extracting spatial clusters regardless of the local densities of the posted geo-tagged documents. Moreover, the proposed method utilizes the network-based important sentence extraction method in order to extract representative geo-tagged documents from each spatial cluster. The experimental results show that the proposed method can extract the areas of interest as spatial clusters and representative documents as main topics.
使用基于网络的代表性文档提取识别基于密度的空间集群中的主要主题
社交媒体上的地理标记文档通常与当地主题和事件有关。从地理标记文档中提取与本地“有吸引力”主题相关的兴趣区域是许多应用程序领域中最重要的挑战之一。在本文中,我们提出了一种从地理标记文档中提取感兴趣区域的新方法。该方法主要分为两个步骤。首先,基于(ε, σ)密度的自适应空间聚类算法提取局部主题引人关注的区域作为空间聚类;其次,检测具有代表性的地理标记文档,识别每个空间簇中的主题;基于(ε, σ)密度的自适应空间聚类算法改变了无缝提取空间聚类的阈值,而与张贴的地理标记文档的局部密度无关。此外,该方法利用基于网络的重要句子提取方法,从每个空间聚类中提取具有代表性的地理标记文档。实验结果表明,该方法可以将感兴趣的区域作为空间聚类,将有代表性的文档作为主题。
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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