学习图表示:一个比较研究

W. Etaiwi, A. Awajan
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引用次数: 2

摘要

图无处不在,它允许我们对实体及其之间的关系进行建模。图数据通常是直接在自然世界中观察到的(例如,电信或社交网络),许多机器学习任务(如分类、链接预测等)的成功主要取决于从图中学习有用的特征表示。本研究调查了在图表示学习领域进行的几项研究。近年来,人们对图表示学习和图嵌入的研究越来越关注,因此有必要对现有的方法在方法和技术上进行比较。本文总结了近年来用于图表示学习的技术和方法,并对它们进行了比较。
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Learning Graph Representation: A Comparative Study
Graphs are ubiquitous and allow us to model entities and the relationships between them. Graph data is often observed directly in the natural world (e.g., telecommunication or social networks), and the success of many machine learning tasks such as classification, link prediction, and many others, depends mainly on learning a useful feature representation from graph. This study investigates several research studies that have been conducted in the field of graph representation learning. The growing attention in graph representation learning and graph embedding in recent years raise the need for comparing the existing methods in terms of methodology and techniques. This paper summarizes the recent techniques and methods used for graph representation learning, and compare them together.
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