大型动态图解耦图神经网络

Y. Zheng, Zhewei Wei, Jiajun Liu
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引用次数: 0

摘要

现实世界的图,如社会网络、金融交易和推荐系统,经常展示动态行为。这种现象被称为图流,涉及节点的动态变化和边的出现和消失。为了有效地捕获这些动态图的结构和时间方面,动态图神经网络已经发展起来。然而,现有的方法通常是针对处理连续时间或离散时间动态图而定制的,并且不能从一种推广到另一种。在本文中,我们提出了一种解耦的大型动态图神经网络,包括统一的动态传播,支持连续和离散动态图的高效计算。由于与图结构相关的计算只在传播过程中进行,因此下游任务的预测过程可以单独训练,而无需进行昂贵的图计算,因此可以插入和使用任何序列模型。因此,我们的算法实现了卓越的可扩展性和表达性。我们在连续时间和离散时间动态图的七个真实数据集上评估了我们的算法。实验结果表明,我们的算法在两种动态图中都达到了最先进的性能。最值得注意的是,我们的算法的可扩展性很好地说明了它的成功应用于具有超过10亿个时间边和超过1亿个节点的大型图。
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Decoupled Graph Neural Networks for Large Dynamic Graphs
Real-world graphs, such as social networks, financial transactions, and recommendation systems, often demonstrate dynamic behavior. This phenomenon, known as graph stream, involves the dynamic changes of nodes and the emergence and disappearance of edges. To effectively capture both the structural and temporal aspects of these dynamic graphs, dynamic graph neural networks have been developed. However, existing methods are usually tailored to process either continuous-time or discrete-time dynamic graphs, and cannot be generalized from one to the other. In this paper, we propose a decoupled graph neural network for large dynamic graphs, including a unified dynamic propagation that supports efficient computation for both continuous and discrete dynamic graphs. Since graph structure-related computations are only performed during the propagation process, the prediction process for the downstream task can be trained separately without expensive graph computations, and therefore any sequence model can be plugged-in and used. As a result, our algorithm achieves exceptional scalability and expressiveness. We evaluate our algorithm on seven real-world datasets of both continuous-time and discrete-time dynamic graphs. The experimental results demonstrate that our algorithm achieves state-of-the-art performance in both kinds of dynamic graphs. Most notably, the scalability of our algorithm is well illustrated by its successful application to large graphs with up to over a billion temporal edges and over a hundred million nodes.
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