行为网:用于动态链接预测的细粒度行为感知网络

IF 2.6 4区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS ACM Transactions on the Web Pub Date : 2023-01-19 DOI:10.1145/3580514
Mingyi Liu, Zhiying Tu, Tonghua Su, Xianzhi Wang, Xiaofei Xu, Zhongjie Wang
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引用次数: 2

摘要

动态链路预测由于其在网络、社会学、交通运输、生物信息学等领域的广泛应用,已成为一个热门的研究课题。目前,主流的动态链路预测方法是基于图神经网络,其中图表示学习是实现动态链路预测任务的关键。然而,仍然存在巨大的挑战,因为图的结构会随着时间的推移而发展。一种常见的方法是将动态图表示为离散快照的集合,其中一段时间内的信息通过求和或平均进行汇总。这种方式会导致一些细粒度的时间相关信息丢失,从而进一步导致一定程度的性能下降。我们推测这种细粒度的信息是至关重要的,因为它暗示了快照中节点和边缘的特定行为模式。为了验证这一猜想,我们提出了一种用于动态网络链路预测的新型细粒度行为感知网络(BehaviorNet)。具体来说,BehaviorNet采用基于变压器的图卷积网络,通过添加边缘行为作为边缘的附加属性来捕获节点的潜在结构表示。GRU利用节点行为作为辅助信息来学习给定动态网络快照的时间特征。在几个真实世界的动态图数据集上进行了大量的实验,结果表明,在几个最先进的(SOTA)离散动态链路预测基线上,BehaviorNet的性能得到了显著提高。烧蚀实验验证了细粒度边缘和节点行为建模的有效性。
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BehaviorNet: A Fine-grained Behavior-aware Network for Dynamic Link Prediction
Dynamic link prediction has become a trending research subject because of its wide applications in web, sociology, transportation, and bioinformatics. Currently, the prevailing approach for dynamic link prediction is based on graph neural networks, in which graph representation learning is the key to perform dynamic link prediction tasks. However, there are still great challenges because the structure of graphs evolves over time. A common approach is to represent a dynamic graph as a collection of discrete snapshots, in which information over a period is aggregated through summation or averaging. This way results in some fine-grained time-related information loss, which further leads to a certain degree of performance degradation. We conjecture that such fine-grained information is vital because it implies specific behavior patterns of nodes and edges in a snapshot. To verify this conjecture, we propose a novel fine-grained behavior-aware network (BehaviorNet) for dynamic network link prediction. Specifically, BehaviorNet adapts a transformer-based graph convolution network to capture the latent structural representations of nodes by adding edge behaviors as an additional attribute of edges. GRU is applied to learn the temporal features of given snapshots of a dynamic network by utilizing node behaviors as auxiliary information. Extensive experiments are conducted on several real-world dynamic graph datasets, and the results show significant performance gains for BehaviorNet over several state-of-the-art (SOTA) discrete dynamic link prediction baselines. Ablation study validates the effectiveness of modeling fine-grained edge and node behaviors.
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来源期刊
ACM Transactions on the Web
ACM Transactions on the Web 工程技术-计算机:软件工程
CiteScore
4.90
自引率
0.00%
发文量
26
审稿时长
7.5 months
期刊介绍: Transactions on the Web (TWEB) is a journal publishing refereed articles reporting the results of research on Web content, applications, use, and related enabling technologies. Topics in the scope of TWEB include but are not limited to the following: Browsers and Web Interfaces; Electronic Commerce; Electronic Publishing; Hypertext and Hypermedia; Semantic Web; Web Engineering; Web Services; and Service-Oriented Computing XML. In addition, papers addressing the intersection of the following broader technologies with the Web are also in scope: Accessibility; Business Services Education; Knowledge Management and Representation; Mobility and pervasive computing; Performance and scalability; Recommender systems; Searching, Indexing, Classification, Retrieval and Querying, Data Mining and Analysis; Security and Privacy; and User Interfaces. Papers discussing specific Web technologies, applications, content generation and management and use are within scope. Also, papers describing novel applications of the web as well as papers on the underlying technologies are welcome.
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