Events are happening in real-world and real-time, which can be planned and organized occasions involving multiple people and objects. Social media platforms publish a lot of text messages containing public events with comprehensive topics. However, mining social events is challenging due to the heterogeneous event elements in texts and explicit and implicit social network structures. In this paper, we design an event meta-schema to characterize the semantic relatedness of social events and build an event-based heterogeneous information network (HIN) integrating information from external knowledge base, and propose a novel Pair-wise Popularity Graph Convolutional Network (PP-GCN) based fine-grained social event categorization model. We propose a Knowledgeable meta-paths Instances based social Event Similarity (KIES) between events and build a weighted adjacent matrix as input to the PP-GCN model. Comprehensive experiments on real data collections are conducted to compare various social event detection and clustering tasks. Experimental results demonstrate that our proposed framework outperforms other alternative social event categorization techniques.
翻译:社会媒体平台公布大量包含具有全面主题的公共活动的文字信息,然而,采矿社会事件具有挑战性,因为文字和明确和隐含的社会网络结构各有不同事件要素。在本文中,我们设计了一个元系统事件,以说明社会事件的语义关联性,并建立一个基于事件的综合信息网络(HIN),将来自外部知识库的信息整合在一起,并提出一个新的基于精细分析的社会事件分类模式(PP-GCN),我们提出一个基于事件相似的可知元病例,并建立一个加权相邻矩阵,作为PP-GCN模式的投入。对真实数据收集进行综合实验,以比较各种社会事件探测和组合任务。实验结果显示,我们提议的框架优于其他社会事件分类方法。