Entropy-Aware Time-Varying Graph Neural Networks with Generalized Temporal Hawkes Process: Dynamic Link Prediction in the Presence of Node Addition and Deletion

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2023-10-04 DOI:10.3390/make5040069
Bahareh Najafi, Saeedeh Parsaeefard, Alberto Leon-Garcia
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Abstract

This paper addresses the problem of learning temporal graph representations, which capture the changing nature of complex evolving networks. Existing approaches mainly focus on adding new nodes and edges to capture dynamic graph structures. However, to achieve more accurate representation of graph evolution, we consider both the addition and deletion of nodes and edges as events. These events occur at irregular time scales and are modeled using temporal point processes. Our goal is to learn the conditional intensity function of the temporal point process to investigate the influence of deletion events on node representation learning for link-level prediction. We incorporate network entropy, a measure of node and edge significance, to capture the effect of node deletion and edge removal in our framework. Additionally, we leveraged the characteristics of a generalized temporal Hawkes process, which considers the inhibitory effects of events where past occurrences can reduce future intensity. This framework enables dynamic representation learning by effectively modeling both addition and deletion events in the temporal graph. To evaluate our approach, we utilize autonomous system graphs, a family of inhomogeneous sparse graphs with instances of node and edge additions and deletions, in a link prediction task. By integrating these enhancements into our framework, we improve the accuracy of dynamic link prediction and enable better understanding of the dynamic evolution of complex networks.
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具有广义时间Hawkes过程的熵感知时变图神经网络:存在节点添加和删除的动态链路预测
本文解决了学习时态图表示的问题,它捕捉了复杂进化网络的变化性质。现有的方法主要集中在添加新的节点和边来捕获动态图结构。然而,为了更准确地表示图的进化,我们将节点和边的添加和删除都视为事件。这些事件发生在不规则的时间尺度上,并使用时间点过程进行建模。我们的目标是学习时间点过程的条件强度函数,以研究删除事件对节点表示学习的影响,用于链接级预测。在我们的框架中,我们结合了网络熵,一种节点和边缘重要性的度量,来捕捉节点删除和边缘去除的效果。此外,我们利用了广义时间霍克斯过程的特征,该过程考虑了过去发生的事件可以降低未来强度的事件的抑制效应。该框架通过对时间图中的添加和删除事件进行有效建模来实现动态表示学习。为了评估我们的方法,我们在链接预测任务中使用自治系统图,这是一组具有节点和边缘添加和删除实例的非齐次稀疏图。通过将这些增强功能集成到我们的框架中,我们提高了动态链路预测的准确性,并能够更好地理解复杂网络的动态演变。
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来源期刊
CiteScore
6.30
自引率
0.00%
发文量
0
审稿时长
7 weeks
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