In this paper we establish a bridge between Topological Data Analysis and Geometric Deep Learning, adapting the topological theory of group equivariant non-expansive operators (GENEOs) to act on the space of all graphs weighted on vertices or edges. This is done by showing how the general concept of GENEO can be used to transform graphs and to give information about their structure. This requires the introduction of the new concepts of generalized permutant and generalized permutant measure and the mathematical proof that these concepts allow us to build GENEOs between graphs. An experimental section concludes the paper, illustrating the possible use of our operators to extract information from graphs. This paper is part of a line of research devoted to developing a compositional and geometric theory of GENEOs for Geometric Deep Learning.
翻译:在本文中,我们建立了地形数据分析与大地深层学习之间的桥梁,调整了群体等同非勘探操作者(GENEOs)的地形学理论,以便对所有按脊椎或边缘加权的图表空间采取行动。这是通过展示GENEO的一般概念如何能够用于改变图表和提供有关其结构的信息而实现的。这需要引入通用的透视和普遍透视测量的新概念,以及这些概念允许我们在图表之间建立GENEOs的数学证明。一个实验部分总结了这一论文,其中说明了我们操作者利用图表提取信息的可能性。本文是专门为开发GENEOs的构成和几何理论以进行几何深测深研究的一部分。