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On Identifying Disaster-Related Tweets: Matching-Based or Learning-Based?

机译:识别与灾害相关的推文:基于匹配或基于学习的?

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Social media such as tweets are emerging as platforms contributing to situational awareness during disasters. Information shared on Twitter by both affected population (e.g., requesting assistance, warning) and those outside the impact zone (e.g., providing assistance) would help first responders, decision makers, and the public to understand the situation first-hand. Effective use of such information requires timely selection and analysis of tweets that are relevant to a particular disaster. Even though abundant tweets are promising as a data source, it is challenging to automatically identify relevant messages since tweet are short and unstructured, resulting to unsatisfactory classification performance of conventional learning-based approaches. Thus, we propose a simple yet effective algorithm to identify relevant messages based on matching keywords and hashtags, and provide a comparison between matching-based and learning-based approaches. To evaluate the two approaches, we put them into a framework specifically proposed for analyzing diaster-related tweets. Analysis results on eleven datasets with various disaster types show that our technique provides relevant tweets of higher quality and more interpretable results of sentiment analysis tasks when compared to learning approach.
机译:社交媒体如微博正在成为灾害期间促进态势感知平台。双方受影响人群(例如,请求援助,警告)和那些外部的冲击区域(例如,提供援助)将帮助第一响应者,决策者和公众在Twitter上分享的信息,了解第一手情况。有效地利用这些信息的需要及时的选择和相关的特殊灾害鸣叫的分析。虽然丰富的微博是有希望作为数据源,它是具有挑战性的自动识别相关的消息,因为推特短而非结构化的,导致对传统的基于学习的方法不能令人满意的分类性能。因此,我们提出了一个简单而有效的算法来基于匹配关键字和#标签相关消息,并提供配套基础和学习为基础的方法之间的比较。为了评估这两种方法,我们把它们放进专门提出了分析diaster相关微博的框架。通过11个数据集与各种灾害类型的分析结果表明,相比于学习方法时,我们的技术提供了更高的品质和情感分析任务的详细解释结果的相关微博。

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