在推特流中追踪德国百年洪水:第一课

G. Fuchs, N. Andrienko, G. Andrienko, Sebastian Bothe, Hendrik Stange
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引用次数: 76

摘要

像Twitter这样的社交微博服务产生了大量的地理信息流和地理位置的状态更新。这种实时信息源对于许多应用领域都是无价的,特别是对于灾难检测和响应场景。因此,相当多的作品处理了它们的获取、分析和可视化问题。这些作品中的大多数不仅假设了适当比例的地理参考信息,允许检测特定区域和时间框架的相关事件,而且这些地理位置在表示潜在时空情况的地点和时间方面是合理正确的。在本文中,我们基于对来自德国的地理参考推文数据集应用可视化分析方法的结果,回顾了这两个关键假设,这些数据集在八个月内见证了全国各地的几次大规模洪水情况。我们的研究结果证实了Twitter作为分布式“社会传感器”的潜力,但同时也强调了在解释即时结果时需要注意的一些问题。为了克服这些限制,我们探索结合其他数据源的证据,包括进一步的社交媒体和移动电话网络指标,以检测、确认和完善有关地点和时间的事件。我们通过提出建议和概述未来可能的工作方向,总结初步分析的经验教训。
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Tracing the German centennial flood in the stream of tweets: first lessons learned
Social microblogging services such as Twitter result in massive streams of georeferenced messages and geolocated status updates. This real-time source of information is invaluable for many application areas, in particular for disaster detection and response scenarios. Consequently, a considerable number of works has dealt with issues of their acquisition, analysis and visualization. Most of these works not only assume an appropriate percentage of georeferenced messages that allows for detecting relevant events for a specific region and time frame, but also that these geolocations are reasonably correct in representing places and times of the underlying spatio-temporal situation. In this paper, we review these two key assumption based on the results of applying a visual analytics approach to a dataset of georeferenced Tweets from Germany over eight months witnessing several large-scale flooding situations throughout the country. Our results confirm the potential of Twitter as a distributed 'social sensor' but at the same time highlight some caveats in interpreting immediate results. To overcome these limits we explore incorporating evidence from other data sources including further social media and mobile phone network metrics to detect, confirm and refine events with respect to location and time. We summarize the lessons learned from our initial analysis by proposing recommendations and outline possible future work directions.
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