索菲:构建地理参考社交媒体的形态学框架

Kyoung-Sook Kim, Hirotaka Ogawa, Akihito Nakamura, I. Kojima
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引用次数: 7

摘要

社交网络已经超越沟通工具,成为了解我们日常生活的重要信息渠道。特别是,它们与地理位置的耦合提高了社交媒体在检测、跟踪和预测现实世界中的动态事件和情况方面的价值。虽然地理标记的社交媒体数量每时每刻都在明显增加,但我们很少有框架来处理时空变化并分析它们之间的关系。在本文中,我们提出了一个框架来理解社交媒体上大量碎片化、嘈杂的数据中动态的社会现象。首先,我们设计了一个数据模型来描述社交媒体地理位置人群的形态特征,并通过使用空间、时间和语义维度的差分测量来定义一组关系。然后,我们描述了我们的实时框架,从流推文中提取形态特征,创建拓扑关系,并将所有特征存储到基于图的数据库中。在实验中,我们以可视化的方式展示了与两次台风(浣熊和下龙)和山体滑坡灾害(广岛)相关的案例研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sophy: a morphological framework for structuring geo-referenced social media
Social networks have played a crucial role of information channels for understanding our daily lives beyond communication tools. In particular, their coupling with geographic location has boosted the worth of social media to detect, track, and predicate dynamic events and situations in the real world. While the amounts of geo-tagged social media are apparently increasing at every moment, we have few framework to handle spatiotemporal changes and analyze their relationships. In this paper, we propose a framework to understand dynamic social phenomena from the mountains of fragmented, noisy data flooding social media. First, we design a data model to describe morphological features of the populations of geo-location of social media and define a set of relationships by using differential measurements in spatial, temporal, and semantic dimensions. Then, we describe our real-time framework to extract morphometric features from streaming tweets, create the topological relationships, and store all features into a graph-based database. In the experiments, we show case studies related to two typhoons (Neoguri and Halong) and a landslide disaster (Hiroshima) with real tweet-sets in a visualization way.
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