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Geolocation using GAT with Multiview Learning

机译:使用GAT与多视图学习的地理位置

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Information in social networks plays an important role in many fields such as event detection, disaster warning, etc. However, due to the lack of geographic metadata, the information is often unusable. Therefore, the geolocation using social network data has gradually become a hot research topic. Existing methods mainly use textual contents, and thus poorly exploit the available data, especially the hidden information in the link. To address this issue, we propose two Multiview learning models, M-GAT and M-GCN, based on the Graph Attention and Graph Convolution Network to fuse both the text and link information. By extracting the text features from multiple angles to extend the feature space, our models achieve the best results on the baseline dataset. The visual display of representations collected from a hidden layer illustrates the validity of our models. Experiments on different feature combination show the effectiveness of our proposal.
机译:社交网络中的信息在许多领域起着重要作用,例如事件检测,灾难警告等。然而,由于缺乏地理元数据,信息通常无法使用。因此,使用社交网络数据的地理位置逐渐成为一个热门的研究主题。现有方法主要使用文本内容,从而利用可用数据,尤其是链接中的隐藏信息不当。为了解决这个问题,我们提出了两个多视图学习模型,M-GAT和M-GCN,基于图表关注和图表卷积网络熔断文本和链接信息。通过从多个角度提取文本特征来扩展要素空间,我们的模型在基线数据集中实现了最佳结果。从隐藏图层收集的表示的视觉显示说明了模型的有效性。不同特征组合的实验表明了我们提案的有效性。

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