类gat图神经网络研究综述

Sikun Guo
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引用次数: 0

摘要

图结构是现实世界中重要的数据结构之一,其应用主要集中在图上,研究实体的特征和各种实体之间的相互作用。近年来,图神经网络(gnn)的发展提高了对有效学习图表示的需求。同时,图形可能又大又复杂,而且有噪声,这给与图形相关的任务带来了障碍。然而,通过将注意力机制整合到图神经网络中,gnn有可能专注于图中最重要的实体和交互,从而有助于做出更好的决策。因此,本文对类gat图神经网络的相关文献进行了全面的梳理。根据输入和输出、注意机制类型、任务,本文提出了一种分类方法,对最近的研究进行分组,并给出了详细的例子,旨在从不同的角度忽略类似gat的gnn。最后,本文讨论了该领域存在的问题和挑战,希望对未来的研究方向提供一些见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Survey on GAT-like Graph Neural Networks
The graph structure is one of the critical data structures in the real world, and its applications focus on graphs, where scholars study entity features and interactions among various entities. Recently, developments in graph neural networks (GNNs) have heightened the need for learning graph representations effectively. Simultaneously, graphs can be large and complex as well as noisy, posing obstacles for graph-related tasks. However, by incorporating the attention mechanism in graph neural networks, it is possible for GNNs to focus on the most important entities and interactions in graphs, contributing to better decisions. Therefore, this paper conducts a comprehensive survey about literature on GAT-like graph neural networks. According to inputs and outputs, types of attention mechanisms, tasks, this paper proposes a taxonomy to group recent works followed by detailed examples, aiming to overlook GAT-like GNNs from different perspectives. At last, this paper discusses the existing problems and challenges in this area, hoping to provide insights for future research directions.
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