Effective Temporal Graph Learning via Personalized PageRank

IF 2.1 3区 物理与天体物理 Q2 PHYSICS, MULTIDISCIPLINARY Entropy Pub Date : 2024-07-10 DOI:10.3390/e26070588
Ziyu Liao, Tao Liu, Yue He, Longlong Lin
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Abstract

Graph representation learning aims to map nodes or edges within a graph using low-dimensional vectors, while preserving as much topological information as possible. During past decades, numerous algorithms for graph representation learning have emerged. Among them, proximity matrix representation methods have been shown to exhibit excellent performance in experiments and scale to large graphs with millions of nodes. However, with the rapid development of the Internet, information interactions are happening at the scale of billions every moment. Most methods for similarity matrix factorization still focus on static graphs, leading to incomplete similarity descriptions and low embedding quality. To enhance the embedding quality of temporal graph learning, we propose a temporal graph representation learning model based on the matrix factorization of Time-constrained Personalize PageRank (TPPR) matrices. TPPR, an extension of personalized PageRank (PPR) that incorporates temporal information, better captures node similarities in temporal graphs. Based on this, we use Single Value Decomposition or Nonnegative Matrix Factorization to decompose TPPR matrices to obtain embedding vectors for each node. Through experiments on tasks such as link prediction, node classification, and node clustering across multiple temporal graphs, as well as a comparison with various experimental methods, we find that graph representation learning algorithms based on TPPR matrix factorization achieve overall outstanding scores on multiple temporal datasets, highlighting their effectiveness.
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通过个性化 PageRank 进行有效的时态图学习
图表示学习旨在使用低维向量映射图中的节点或边,同时尽可能多地保留拓扑信息。在过去几十年中,出现了许多图表示学习算法。其中,接近矩阵表示法在实验中表现出卓越的性能,并可扩展到拥有数百万节点的大型图。然而,随着互联网的飞速发展,每时每刻都在发生着数十亿规模的信息交互。大多数相似性矩阵因式分解方法仍侧重于静态图,导致相似性描述不完整,嵌入质量不高。为了提高时态图学习的嵌入质量,我们提出了一种基于时间约束个性化页面排名(TPPR)矩阵因式分解的时态图表示学习模型。TPPR 是包含时间信息的个性化 PageRank (PPR) 的扩展,能更好地捕捉时态图中的节点相似性。在此基础上,我们使用单值分解或非负矩阵因式分解来分解 TPPR 矩阵,从而获得每个节点的嵌入向量。通过在多个时空图中进行链接预测、节点分类和节点聚类等任务的实验,以及与各种实验方法的比较,我们发现基于 TPPR 矩阵因式分解的图表示学习算法在多个时空数据集上取得了整体优异的成绩,凸显了其有效性。
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来源期刊
Entropy
Entropy PHYSICS, MULTIDISCIPLINARY-
CiteScore
4.90
自引率
11.10%
发文量
1580
审稿时长
21.05 days
期刊介绍: Entropy (ISSN 1099-4300), an international and interdisciplinary journal of entropy and information studies, publishes reviews, regular research papers and short notes. Our aim is to encourage scientists to publish as much as possible their theoretical and experimental details. There is no restriction on the length of the papers. If there are computation and the experiment, the details must be provided so that the results can be reproduced.
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