Heterogeneous Network Embedding With Enhanced Event Awareness Via Triplet Network

Zhi Qiao, Bo Liu, Bo Tian, Yu Liu
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Abstract

Network analysis is an unavoidable topic in data mining today, and network embedding is an important means to help solve network analysis. With the increasing of network data volume, the content is increasingly complicated, the embedding scenario of homogeneous graph has been gradually replaced by heterogeneous graph. More and more embedding algorithms for heterogeneous graphs are proposed. Heterogeneous network can naturally integrate different aspects of information, so heterogeneous network embedding is a relatively effective method to solve the diversity of big data. It is helpful in the areas of anomaly detection, user clustering and intent recommendation. Here we propose a Siamese Neural Network optimization method based on event relations and meta graphs. This method ensures the semantic integrity and event integrity of heterogeneous graphs by using events and meta graphs respectively. Then put the graph information in Triplet Network for training, and the embedding results are produced. A classification task on a dataset for the true network are designed to prove the method. A real network data set classification task is designed to prove that this method is helpful for heterogeneous graph analysis.
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基于三重网络增强事件感知的异构网络嵌入
网络分析是当今数据挖掘中不可回避的话题,而网络嵌入是解决网络分析问题的重要手段。随着网络数据量的增加,内容的日益复杂,同构图的嵌入场景逐渐被异构图所取代。异构图的嵌入算法越来越多。异构网络可以自然地整合不同方面的信息,因此异构网络嵌入是解决大数据多样性的一种相对有效的方法。它在异常检测、用户聚类和意图推荐等方面都很有帮助。本文提出了一种基于事件关系和元图的Siamese神经网络优化方法。该方法通过使用事件图和元图来保证异构图的语义完整性和事件完整性。然后将图信息放入三元网络中进行训练,得到嵌入结果。设计了一个真实网络数据集上的分类任务来验证该方法。设计了一个真实的网络数据集分类任务,验证了该方法对异构图分析的帮助。
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