The scattering transform is a multilayered wavelet-based deep learning architecture that acts as a model of convolutional neural networks. Recently, several works have introduced generalizations of the scattering transform for non-Euclidean settings such as graphs. Our work builds upon these constructions by introducing windowed and non-windowed geometric scattering transforms for graphs based upon a very general class of asymmetric wavelets. We show that these asymmetric graph scattering transforms have many of the same theoretical guarantees as their symmetric counterparts. As a result, the proposed construction unifies and extends known theoretical results for many of the existing graph scattering architectures. In doing so, this work helps bridge the gap between geometric scattering and other graph neural networks by introducing a large family of networks with provable stability and invariance guarantees. These results lay the groundwork for future deep learning architectures for graph-structured data that have learned filters and also provably have desirable theoretical properties.
翻译:散射变异是一种多层波子的深层学习结构,它作为进化神经网络的模型。 最近,一些作品引入了非欧化图等非欧化图设置的散射变异的常规化。 我们的工作以这些构造为基础,采用了基于非对称波子非常普通类别的图形的窗口化和非风化几何散变。 我们显示,这些不对称图形的散射变异具有与其对等对等系统许多相同的理论保障。 因此,拟议中的构造统一并扩展了许多现有图形散射图结构已知的理论结果。 在这样做的过程中,这项工作通过引入一个具有可调和稳定性和可变性保证的庞大网络组合,帮助弥合几何散射和其他图形神经网络之间的鸿沟。 这些结果为将来的图表结构数据深层学习架构奠定了基础,这些结构已经学习了过滤器,并且可以肯定具有理想的理论属性。