Hierarchical Attention based Feature Learning for Interpretable Social Event Prediction

Yinsen Wang, Xin Zhang, Yan Pan, Zexin Fu
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Abstract

abstract. Major social events, e.g., civil unrests, generally impact both social stability and civil life. Therefore, anticipating the occurrence of concerned social events in advance is of great significance to decision makers. By mining previous indicators of the event type of interest from open-source data, we can make inference on whether a particular one of that type will occur sometime in the future. In recent years, this kind of data-driven approaches have been proposed to predict social events. However, there are still some challenges remaining to be addressed: (I) Modeling previous feature for a particular event based on limited and obtainable data source. (II) Mining temporal dependences between complicated information in different periods. (III) Explaining prediction results from a reasonable perspective. To cope with these research issues, we proposed a hierarchical attention-based feature learning framework for interpretable social event prediction. We model the evolution processes prior to the onset of an event of interest using a sequence of temporal event graphs. Then, we employ the GNN (Graph Neural Network) approach for graph mining and the attention mechanism on multi-level data for feature learning. For model explanation, an importance evaluation indicator is proposed to identify influential factors of distinct feature levels leading to the event occurrence from the past. Additionally, we conduct experiments on four real-world datasets to verify the proposed method. The results indicate that it outperforms other baseline models on protest prediction tasks.
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摘要重大社会事件,例如内乱,通常会影响社会稳定和公民生活。因此,提前预测相关社会事件的发生对决策者来说具有重要意义。通过从开源数据中挖掘感兴趣的事件类型的先前指标,我们可以推断该类型的特定事件是否会在未来某个时候发生。近年来,人们提出了这种数据驱动的方法来预测社会事件。然而,仍然存在一些有待解决的挑战:(I)基于有限的和可获得的数据源为特定事件建模以前的特征。(二)挖掘不同时期复杂信息之间的时间依赖关系。(三)从合理角度解释预测结果。为了解决这些研究问题,我们提出了一个分层的基于注意的特征学习框架,用于可解释的社会事件预测。我们使用时序事件图来模拟感兴趣的事件发生之前的进化过程。然后,我们采用GNN(图神经网络)方法进行图挖掘,并采用多层次数据的注意机制进行特征学习。为了对模型进行解释,提出了一个重要度评价指标,以识别不同特征水平的影响因素导致事件从过去发生。此外,我们在四个真实数据集上进行了实验来验证所提出的方法。结果表明,它在抗议预测任务上优于其他基线模型。
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