Water quality issues: Can we detect a creeping crisis with social media data?

Stelios Andreadis, N. Pantelidis, Ilias Gialampoukidis, S. Vrochidis, Y. Kompatsiaris
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Abstract

Social media data have been widely used in disaster management and particularly for the early detection of disaster emergencies. However, apart from sudden crises, there are also creeping crises, which are less evident but can be equally threatening to human lives, such as water pollution. The question raised is whether social media data can be used for discovering issues of water quality. In this work we attempt to answer this question by collecting posts from Twitter during the period of one year, which contain keywords about water quality, and applying three well-known techniques for event detection, i.e. Z-score, STA/LTA, and DBSCAN. A detailed presentation of the detected events, both relevant and not relevant, is given to provide more insight and proves that it is indeed feasible to identify water quality events with social media data. In addition, a quantitative evaluation of the three methods, in terms of precision, shows the superiority of Z-score for this particular topic.
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水质问题:我们能通过社交媒体数据发现正在蔓延的危机吗?
社会媒体数据已广泛用于灾害管理,特别是用于早期发现灾害紧急情况。然而,除了突发危机之外,还有悄悄发生的危机,这些危机不那么明显,但对人类的生命同样构成威胁,比如水污染。提出的问题是,社交媒体数据是否可以用于发现水质问题。在这项工作中,我们试图通过收集Twitter上一年的帖子来回答这个问题,这些帖子包含有关水质的关键词,并应用三种众所周知的事件检测技术,即Z-score, STA/LTA和DBSCAN。详细介绍了检测到的事件,包括相关的和不相关的,以提供更多的见解,并证明利用社交媒体数据识别水质事件确实是可行的。此外,对这三种方法的精度进行定量评估,显示了Z-score在这个特定主题上的优势。
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