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Deep Learning-Based Spatial Analytics for Disaster-Related Tweets: An Experimental Study

机译:基于深度学习的灾难相关推文空间分析:一项实验研究

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Online social networks are being widely used during unexpected large-scale disasters not only for sharing latest news but also requesting emergency rescues. Particularly, social network posts with their location information are becoming more important because they can be utilized for emergency management, urban planning, and various studies to understand effects of the disasters. Despite their importance, the percentage of such posts is generally tiny. In this paper, to address the location sparsity problem on Twitter in the event of disasters, we propose a deep learning-based framework to spatially analyze the disaster-related tweets by focusing on classifying tweets from affected areas of disasters. We also study effects of different deep learning architectures and input embedding techniques for this classification task. Our experimental results demonstrate that our ConvNet model with the Word2vec word embedding has the highest classification accuracy.
机译:在线社交网络在意外的大规模灾难中被广泛使用,不仅用于共享最新消息,而且还要求紧急救援。尤其是,带有位置信息的社交网络帖子变得越来越重要,因为它们可用于应急管理,城市规划和各种研究,以了解灾难的影响。尽管它们很重要,但此类职位所占的百分比通常很小。在本文中,为了解决Twitter在发生灾难时的位置稀疏性问题,我们提出了一个基于深度学习的框架,通过集中于对受灾地区的推文进行分类,来对与灾难相关的推文进行空间分析。我们还研究了针对该分类任务的不同深度学习架构和输入嵌入技术的影响。我们的实验结果表明,带有Word2vec词嵌入的ConvNet模型具有最高的分类精度。

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