Geometric scattering on measure spaces

IF 2.6 2区 数学 Q1 MATHEMATICS, APPLIED Applied and Computational Harmonic Analysis Pub Date : 2024-02-06 DOI:10.1016/j.acha.2024.101635
Joyce Chew, Matthew Hirn, Smita Krishnaswamy, Deanna Needell, Michael Perlmutter, Holly Steach, Siddharth Viswanath, Hau-Tieng Wu
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Abstract

The scattering transform is a multilayered, wavelet-based transform initially introduced as a mathematical model of convolutional neural networks (CNNs) that has played a foundational role in our understanding of these networks' stability and invariance properties. In subsequent years, there has been widespread interest in extending the success of CNNs to data sets with non-Euclidean structure, such as graphs and manifolds, leading to the emerging field of geometric deep learning. In order to improve our understanding of the architectures used in this new field, several papers have proposed generalizations of the scattering transform for non-Euclidean data structures such as undirected graphs and compact Riemannian manifolds without boundary. Analogous to the original scattering transform, these works prove that these variants of the scattering transform have desirable stability and invariance properties and aim to improve our understanding of the neural networks used in geometric deep learning.

In this paper, we introduce a general, unified model for geometric scattering on measure spaces. Our proposed framework includes previous work on compact Riemannian manifolds without boundary and undirected graphs as special cases but also applies to more general settings such as directed graphs, signed graphs, and manifolds with boundary. We propose a new criterion that identifies to which groups a useful representation should be invariant and show that this criterion is sufficient to guarantee that the scattering transform has desirable stability and invariance properties. Additionally, we consider finite measure spaces that are obtained from randomly sampling an unknown manifold. We propose two methods for constructing a data-driven graph on which the associated graph scattering transform approximates the scattering transform on the underlying manifold. Moreover, we use a diffusion-maps based approach to prove quantitative estimates on the rate of convergence of one of these approximations as the number of sample points tends to infinity. Lastly, we showcase the utility of our method on spherical images, a directed graph stochastic block model, and on high-dimensional single-cell data.

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度量空间上的几何散射
散射变换是一种基于小波的多层变换,最初是作为卷积神经网络(CNN)的数学模型引入的,在我们理解这些网络的稳定性和不变性特性方面发挥了奠基性作用。随后几年,将卷积神经网络的成功经验扩展到具有非欧几里得结构的数据集(如图和流形)的研究受到了广泛关注,由此产生了新兴的几何深度学习领域。为了提高我们对这一新领域所用架构的理解,多篇论文提出了针对非欧几里得数据结构(如无向图和无边界紧凑黎曼流形)的散射变换广义化。与原始散射变换类似,这些工作证明了散射变换的这些变体具有理想的稳定性和不变性,并旨在提高我们对几何深度学习中使用的神经网络的理解。我们提出的框架包括以前在无边界紧凑黎曼流形和无向图特例方面的工作,但也适用于有向图、有符号图和有边界流形等更一般的环境。我们提出了一个新的标准,用于确定有用的表示应该对哪些组不变,并证明这个标准足以保证散射变换具有理想的稳定性和不变性。此外,我们还考虑了从未知流形随机取样得到的有限度量空间。我们提出了两种构建数据驱动图的方法,在这些图上,相关的图散射变换近似于底层流形上的散射变换。此外,我们使用基于扩散图的方法,证明了当采样点数量趋于无穷大时,其中一种近似方法收敛率的定量估计值。最后,我们展示了我们的方法在球形图像、有向图随机块模型和高维单细胞数据上的实用性。
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来源期刊
Applied and Computational Harmonic Analysis
Applied and Computational Harmonic Analysis 物理-物理:数学物理
CiteScore
5.40
自引率
4.00%
发文量
67
审稿时长
22.9 weeks
期刊介绍: Applied and Computational Harmonic Analysis (ACHA) is an interdisciplinary journal that publishes high-quality papers in all areas of mathematical sciences related to the applied and computational aspects of harmonic analysis, with special emphasis on innovative theoretical development, methods, and algorithms, for information processing, manipulation, understanding, and so forth. The objectives of the journal are to chronicle the important publications in the rapidly growing field of data representation and analysis, to stimulate research in relevant interdisciplinary areas, and to provide a common link among mathematical, physical, and life scientists, as well as engineers.
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