Deep learning's performance has been extensively recognized recently. Graph neural networks (GNNs) are designed to deal with graph-structural data that classical deep learning does not easily manage. Since most GNNs were created using distinct theories, direct comparisons are impossible. Prior research has primarily concentrated on categorizing existing models, with little attention paid to their intrinsic connections. The purpose of this study is to establish a unified framework that integrates GNNs based on spectral graph and approximation theory. The framework incorporates a strong integration between spatial- and spectral-based GNNs while tightly associating approaches that exist within each respective domain.
翻译:深层学习的性能最近得到了广泛的承认。 图形神经网络(GNNs)旨在处理古代深层学习难以管理的图形结构数据。 由于大多数GNS都是使用不同理论创建的,因此不可能进行直接比较。 先前的研究主要集中于对现有模型进行分类,很少注意其内在联系。 本研究的目的是建立一个统一框架,根据光谱图和近似理论将GNS综合起来。 该框架包含了基于空间和光谱的GNNs之间的紧密整合,同时将每个领域现有的方法紧密结合在一起。