基于密度的自适应时空聚类实时局部主题提取,增强局部态势感知

Tatsuhiro Sakai, Keiichi Tamura, Shota Kotozaki, Tsubasa Hayashida, H. Kitakami
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引用次数: 2

摘要

在大数据时代,我们正在见证一种新型信息源的快速成长。特别是,tweet是在紧急情况下最广泛使用的情况感知微博服务之一。在我们之前的工作中,我们关注的是在Twitter上发布的带有地理标签的推文,这些推文包括位置信息、时间和文本信息。我们之前开发了一个实时分析系统,使用基于(ε,τ)密度的自适应时空聚类算法来分析本地主题和事件。提出的时空分析系统成功地检测到与观察到的主题相关的地理标记推文活跃发布的新兴突发区域;然而,该系统是为特定观察主题量身定制和专门的,因此,它不能识别其他主题。为了解决这一问题,我们提出了一种新的实时时空分析系统,该系统使用基于密度的自适应时空聚类算法来增强局部态势感知。在该系统中,提取局部突发关键词并识别其突发区域。我们使用与日本天气相关的真实世界主题来评估拟议的系统。实验结果表明,该系统能够有效地提取局部主题和事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time local topic extraction using density-based adaptive spatiotemporal clustering for enhancing local situation awareness
In the era of big data, we are witnessing the rapid growth of a new type of information source. In particular, tweets are one of the most widely used microblogging services for situation awareness during emergencies. In our previous work, we focused on geotagged tweets posted on Twitter that included location information as well as a time and text message. We previously developed a real-time analysis system using the (ε,τ)-density-based adaptive spatiotemporal clustering algorithm to analyze local topics and events. The proposed spatiotemporal analysis system successfully detects emerging bursty areas in which geotagged tweets related to observed topics are posted actively; however the system is tailor-made and specialized for a particular observed topic, therefore, it cannot identify other topics. To address this issue, we propose a new real-time spatiotemporal analysis system for enhancing local situation awareness using a density-based adaptive spatiotemporal clustering algorithm. In the proposed system, local bursty keywords are extracted and their bursty areas are identified. We evaluated the proposed system using actual real world topics related to weather in Japan. Experimental results show that the proposed system can extract local topics and events.
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