论文标题

半监督的图形注意网络用于事件表示学习

Semi-Supervised Graph Attention Networks for Event Representation Learning

论文作者

Mattos, Joao Pedro Rodrigues, Marcacini, Ricardo M.

论文摘要

新闻和社交网络的活动分析对于广泛的社会研究和现实世界应用非常有用。最近,已将事件图探索到模型事件数据集及其复杂关系,其中事件是将角色连接到代表位置,人的名称,日期和其他各种事件元数据的其他顶点。图表学习方法是从事件图中提取潜在特征以实现不同分类算法的有希望的。但是,现有方法无法满足事件图的基本要求,例如(i)处理半监督图嵌入以利用某些标记的事件,(ii)自动确定事件顶点与其元数据顶点之间关系的重要性,以及(iii)处理图形异质性。本文介绍了GNEE(GAT神经事件嵌入),该方法结合了图形注意网络和图形正则化。首先,提出了一个事件图正规化,以确保所有图顶点都接收事件功能,从而减轻图形异质性缺陷。其次,半监督图嵌入具有自我发挥的机制的嵌入,考虑了现有的标记事件,并在表示图中了解了事件图中关系的重要性。对实验结果的统计分析,使用五个现实世界事件图和六个图形嵌入方法表明,我们的GNEE胜过最先进的半监督图嵌入方法。

Event analysis from news and social networks is very useful for a wide range of social studies and real-world applications. Recently, event graphs have been explored to model event datasets and their complex relationships, where events are vertices connected to other vertices representing locations, people's names, dates, and various other event metadata. Graph representation learning methods are promising for extracting latent features from event graphs to enable the use of different classification algorithms. However, existing methods fail to meet essential requirements for event graphs, such as (i) dealing with semi-supervised graph embedding to take advantage of some labeled events, (ii) automatically determining the importance of the relationships between event vertices and their metadata vertices, as well as (iii) dealing with the graph heterogeneity. This paper presents GNEE (GAT Neural Event Embeddings), a method that combines Graph Attention Networks and Graph Regularization. First, an event graph regularization is proposed to ensure that all graph vertices receive event features, thereby mitigating the graph heterogeneity drawback. Second, semi-supervised graph embedding with self-attention mechanism considers existing labeled events, as well as learns the importance of relationships in the event graph during the representation learning process. A statistical analysis of experimental results with five real-world event graphs and six graph embedding methods shows that our GNEE outperforms state-of-the-art semi-supervised graph embedding methods.

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