A Comparison Study of Graph Neural Network and Support Vector Machine

Siying Lin, J. Alves, Francesca Bugiotti, F. Magoulès
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Abstract

A variety of issues, including classification, link prediction, and graph clustering, have been solved using graph neural network (GNN), an efficient method for handling non-Euclidean structural data. Another effective and reliable mathematical tool for classification and regression applications is support vector machine (SVM). We hope that this paper will help readers gain a better knowledge of the latest developments in graph neural networks and how they are used in a variety of fields. We also describe current research on using support vector machines for prediction and classification problems. Following that, a comparison between SVM and GNN is made, and the results are discussed.
图神经网络与支持向量机的比较研究
图神经网络(GNN)是一种处理非欧几里德结构数据的有效方法,已经解决了包括分类、链接预测和图聚类在内的各种问题。另一个用于分类和回归应用的有效可靠的数学工具是支持向量机(SVM)。我们希望本文能帮助读者更好地了解图神经网络的最新发展,以及它们在各个领域的应用。我们还描述了目前使用支持向量机进行预测和分类问题的研究。然后,将SVM与GNN进行了比较,并对结果进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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