图神经网络

Yuyu Zhang, Xinshi Chen, Yuan Yang, Arun Ramamurthy, Bo Li, Yuan Qi, Le Song
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引用次数: 78

摘要

深度学习已经成为当今人工智能研究中最主要的方法之一。尽管传统的深度学习技术已经在欧几里得数据(如图像)或序列数据(如文本)上取得了巨大的成功,但仍有许多应用自然地或最好地用图结构来表示。这一差距推动了图上深度学习的研究浪潮,其中图神经网络(gnn)在处理大量应用领域的各种学习任务方面最为成功。在本章中,我们将从基础、前沿和应用三个方面系统地组织gnn的现有研究。我们将介绍gnn的基本方面,从流行的模型和它们的表达能力,到gnn的可扩展性、可解释性和鲁棒性。然后,我们将讨论各种前沿研究,从图分类和链接预测,到图生成和转换,图匹配和图结构学习。在此基础上,我们进一步总结了在大量应用中充分利用各种gnn的基本步骤。最后,我们提供了本书的组织,并总结了gnn的各种研究主题的路线图。吴凌飞京东硅谷研究中心,e-mail: lwu@email.wm.edu崔鹏清华大学计算机系,e-mail: cuip@tsinghua.edu.cn裴健西蒙弗雷泽大学计算机系,e-mail: jpei@cs.sfu.ca赵亮埃默里大学计算机系,e-mail: liang.zhao@emory.edu宋乐穆罕默德本扎耶德人工智能大学,e-mail: dasongle@gmail.com
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph Neural Networks
Deep Learning has become one of the most dominant approaches in Artificial Intelligence research today. Although conventional deep learning techniques have achieved huge successes on Euclidean data such as images, or sequence data such as text, there are many applications that are naturally or best represented with a graph structure. This gap has driven a tide in research for deep learning on graphs, among them Graph Neural Networks (GNNs) are the most successful in coping with various learning tasks across a large number of application domains. In this chapter, we will systematically organize the existing research of GNNs along three axes: foundations, frontiers, and applications. We will introduce the fundamental aspects of GNNs ranging from the popular models and their expressive powers, to the scalability, interpretability and robustness of GNNs. Then, we will discuss various frontier research, ranging from graph classification and link prediction, to graph generation and transformation, graph matching and graph structure learning. Based on them, we further summarize the basic procedures which exploit full use of various GNNs for a large number of applications. Finally, we provide the organization of our book and summarize the roadmap of the various research topics of GNNs. Lingfei Wu JD.COM Silicon Valley Research Center, e-mail: lwu@email.wm.edu Peng Cui Department of Computer Science, Tsinghua University, e-mail: cuip@tsinghua.edu.cn Jian Pei Department of Computer Science, Simon Fraser University, e-mail: jpei@cs.sfu.ca Liang Zhao Department of Computer Science, Emory University, e-mail: liang.zhao@emory.edu Le Song Mohamed bin Zayed University of Artificial Intelligence, e-mail: dasongle@gmail.com
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