论文标题
图形神经网络用于节点级预测
Graph Neural Networks for Node-Level Predictions
论文作者
论文摘要
深度学习的成功彻底改变了许多研究领域,包括计算机视觉,文本和语音处理领域。巨大的研究工作导致了许多能够有效分析数据的方法,尤其是在欧几里得空间中。但是,在具有复杂连接模式的一般图形的非欧几里得域中构成了许多问题。提高的问题复杂性和计算功率约束的早期方法有限,对静态图和小型图的方法有限。近年来,对机器学习对图形结构数据的兴趣不断增加,并伴随着克服其前辈局限性的改进方法。这些方法为处理大规模和时间动态图的方式铺平了道路。这项工作旨在为节点级预测任务提供基于早期和现代图神经网络的机器学习方法的概述。在文献中已经建立的分类法的保护下,我们解释了核心概念,并为具有强烈影响的卷积方法提供了详细的解释。此外,我们引入了共同的基准,并目前来自各个领域的某些应用。最后,我们讨论了进一步研究的开放问题。
The success of deep learning has revolutionized many fields of research including areas of computer vision, text and speech processing. Enormous research efforts have led to numerous methods that are capable of efficiently analyzing data, especially in the Euclidean space. However, many problems are posed in non-Euclidean domains modeled as general graphs with complex connection patterns. Increased problem complexity and computational power constraints have limited early approaches to static and small-sized graphs. In recent years, a rising interest in machine learning on graph-structured data has been accompanied by improved methods that overcome the limitations of their predecessors. These methods paved the way for dealing with large-scale and time-dynamic graphs. This work aims to provide an overview of early and modern graph neural network based machine learning methods for node-level prediction tasks. Under the umbrella of taxonomies already established in the literature, we explain the core concepts and provide detailed explanations for convolutional methods that have had strong impact. In addition, we introduce common benchmarks and present selected applications from various areas. Finally, we discuss open problems for further research.