Arabic Geo-Social Event Detection using a Hybrid Learning Architecture

Imad Afyouni, Baraa Kakah, Maissan Bazazeh
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Abstract

Modern smart cities are increasingly driven by citizens’ generated content over social media. More people in the Arab world than ever are using social networks and user generated content to express their thoughts and feedback on trending topics. With this increase in use, the demand has risen to be able to analyze data from social networks using the native Arabic language. Because Arabic is one of the most complex languages, this presents many challenges such as how to differentiate dialects, how to infer the semantics of sentences and even words, and what to do with the numerous diacritics involved in the language. In this paper, we discuss geo-social event detection from Arabic tweets without focusing on any dialect. We propose a hybrid learning architecture by using a deep learning model and a clustering technique to detect social events and map them to their spatial and temporal properties. Our system features a semantic keyword generation tool powered by AraBERT, which is used to prepare datasets for event classification. The classification process involves using both CNN and bidirectional LSTM techniques. To determine the location of events, we utilized a hierarchical density-based spatial clustering method. Experiments were performed on Twitter datasets to assess the system’s effectiveness and efficiency. The findings indicate that this hybrid approach for extracting spatio-temporal events is well-suited for detecting and tracking events in real-time from social media.
使用混合学习架构的阿拉伯地理社会事件检测
现代智慧城市越来越多地由公民在社交媒体上生成的内容驱动。阿拉伯世界比以往任何时候都有更多的人使用社交网络和用户生成的内容来表达他们对热门话题的想法和反馈。随着使用的增加,对能够使用母语阿拉伯语分析社交网络数据的需求也在上升。因为阿拉伯语是最复杂的语言之一,这提出了许多挑战,例如如何区分方言,如何推断句子甚至单词的语义,以及如何处理语言中涉及的众多变音符号。在本文中,我们讨论了从阿拉伯语推文中检测地理社会事件,而不关注任何方言。我们提出了一种混合学习架构,使用深度学习模型和聚类技术来检测社会事件并将它们映射到它们的空间和时间属性。我们的系统具有由AraBERT提供支持的语义关键字生成工具,用于为事件分类准备数据集。分类过程包括使用CNN和双向LSTM技术。为了确定事件的位置,我们使用了基于密度的分层空间聚类方法。在Twitter数据集上进行了实验,以评估系统的有效性和效率。研究结果表明,这种提取时空事件的混合方法非常适合于从社交媒体实时检测和跟踪事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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