从社交网络提要看事件定位的质量

P. Giridhar, T. Abdelzaher, Jemin George, Lance M. Kaplan
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引用次数: 25

摘要

像Twitter这样的社交网络承载着正在发生的事件的重要信息,因此可以被看作是监测和报告现实世界中事件的传感器网络。在本文中,我们关注的是来自Twitter feed的事件本地化的挑战。我们探讨了可以直接或间接从微博条目中获得的有关正在发生的事件地点的信息的质量。与之前使用Twitter来绘制大足迹事件区域或派生粗粒度位置信息的工作相反,在本文中,我们对点事件(如建筑火灾或车祸)感兴趣,并旨在将它们精确定位到街道地址。提出了一种识别博客圈中不同事件签名的算法,根据微博描述的事件对微博进行聚类,并对聚类结果进行分析,以获得细粒度的位置指示器。然后通过融合这些指标得出一个准确的事件位置。为了评估衍生位置信息的质量,我们使用了来自加州3个主要城市的道路交通相关Twitter feed,并将我们服务中的自动事件定位与手动获取的地面真实数据进行了比较。结果表明,我们自动确定的位置与地面真实值之间有很大的对应关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On quality of event localization from social network feeds
Social networks, such as Twitter, carry important information on ongoing events and as such can be viewed as networks of sensors that monitor and report events in the physical world. In this paper, we concern ourselves with the challenge of event localization from Twitter feeds. We explore the quality of information that can be derived either directly or indirectly from microblog entries regarding locations of ongoing events. Contrary to prior work that used Twitter to map regions of large-footprint events, or derived coarse-grained location information, in this paper, we are interested in point-events, such as building fires or car accidents, and aim to pin-point them down to a street address. An algorithm is presented that identifies distinct event signatures in the blogosphere, clusters microblogs based on events they describe, and analyzes the resulting clusters for fine-grained location indicators. An exact event location is then derived by fusing these indicators. To evaluate the quality of derived location information, we use road-traffic-related Twitter feeds from 3 major cities in California and compare automatic event localization within our service to manually obtained ground truth data. Results show a great correspondence between our automatically determined locations and ground-truth.
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