Graph representations for real-world social networks in the past have missed two important elements: the multiplexity of connections as well as representing time. To this end, in this paper, we present a new dynamic heterogeneous graph representation for social networks which includes time in every single component of the graph, i.e., nodes and edges, each of different types that captures heterogeneity. We illustrate the power of this representation by presenting four time-dependent queries and deep learning problems that cannot easily be handled in conventional homogeneous graph representations commonly used. As a proof of concept we present a detailed representation of a new social media platform (Steemit), which we use to illustrate both the dynamic querying capability as well as prediction tasks using graph neural networks (GNNs). The results illustrate the power of the dynamic heterogeneous graph representation to model social networks. Given that this is a relatively understudied area we also illustrate opportunities for future work in query optimization as well as new dynamic prediction tasks on heterogeneous graph structures.
翻译:过去,真实世界社会网络的图形表达方式遗漏了两个重要要素:连接的多重性和代表时间。为此,我们在本文件中为社交网络提供了一个新的动态多式图形表达方式,其中包括图形每个组成部分的时间,即节点和边缘,其中每种类型都捕捉了异质性。我们通过提出四个时间性查询和深层学习问题来说明这种表达方式的力量,而这四个问题通常在传统的同质图形表达方式中难以轻易处理。作为概念的证明,我们详细介绍了一个新的社交媒体平台(Steemit),我们用这些平台来说明动态查询能力以及利用图形神经网络(GNNNs)预测任务。结果说明了动态多式图形代表方式在模拟社会网络方面的力量。鉴于这是一个研究程度相对不足的领域,我们还展示了今后在查询优化方面开展工作的机会,以及在多式图表结构上新的动态预测任务。