The rising popularity of online social network services has attracted lots of research on mining social media data, especially on mining social events. Social event detection, due to its wide applications, has now become a trivial task. State-of-the-art approaches exploiting Graph Neural Networks (GNNs) usually follow a two-step strategy: 1) constructing text graphs based on various views (\textit{co-user}, \textit{co-entities} and \textit{co-hashtags}); and 2) learning a unified text representation by a specific GNN model. Generally, the results heavily rely on the quality of the constructed graphs and the specific message passing scheme. However, existing methods have deficiencies in both aspects: 1) They fail to recognize the noisy information induced by unreliable views. 2) Temporal information which works as a vital indicator of events is neglected in most works. To this end, we propose ETGNN, a novel Evidential Temporal-aware Graph Neural Network. Specifically, we construct view-specific graphs whose nodes are the texts and edges are determined by several types of shared elements respectively. To incorporate temporal information into the message passing scheme, we introduce a novel temporal-aware aggregator which assigns weights to neighbours according to an adaptive time exponential decay formula. Considering the view-specific uncertainty, the representations of all views are converted into mass functions through evidential deep learning (EDL) neural networks, and further combined via Dempster-Shafer theory (DST) to make the final detection. Experimental results on three real-world datasets demonstrate the effectiveness of ETGNN in accuracy, reliability and robustness in social event detection.
翻译:在线社交网络服务越来越受欢迎,吸引了许多关于采矿社交媒体数据的研究,特别是关于采矿社会事件的研究。社会事件探测,由于其应用范围广泛,现已成为一个微不足道的任务。利用图形神经网络(GNNS)的最先进方法通常遵循一个两步战略:1)根据各种观点(\ textit{co-user},\ textit{co-entities}和\ textit{co-hashtags})构建文本图表;和2)学习一个特定的GNN模型的统一文本代表。一般而言,结果在很大程度上依赖于构建的图表质量和特定信息传递计划。然而,现有的方法在两个方面都有缺陷:(1) 它们没有认识到不可靠观点引发的混乱信息。(2) 多数工作忽略了作为事件重要指标的时空信息。 为此,我们建议建立一个新颖的 EGNNNNN, 新的T, 新的Tevencial-awareal Neural 网络。我们构建的查看具体图表,其节点是由若干种深度的图像和边端由共享的网络所决定的准确性和传递。但是,现有的方法有两种方法在两个共享的深度的图像中都有了: ST- dealalalalalalaldealdealdealalalalalalalalal real real real realdealdeal real real real real real real real real real real real real real realationalationalationalationalationalationalational)。