This paper addresses problems in functional metric geometry that arise in the study of data such as signals recorded on geometric domains or on the nodes of weighted networks. Datasets comprising such objects arise in many domains of scientific and practical interest. For example, $f$ could represent a functional magnetic resonance image, or the nodes of a social network labeled with attributes or preferences, where the underlying metric structure is given by the shortest path distance, commute distance, or diffusion distance. Formally, these may be viewed as functions defined on metric spaces, sometimes equipped with additional structure such as a probability measure, in which case the domain is referred to as a metric-measure space, or simply $mm$-space. Our primary goal is threefold: (i) to develop metrics that allow us to model and quantify variation in functional data, possibly with distinct domains; (ii) to investigate principled empirical estimations of these metrics; (iii) to construct a universal function that ``contains'' all functions whose domains and ranges are Polish (separable and complete metric) spaces, assuming Lipschitz regularity. The latter is much in the spirit of constructing universal spaces for structural data (metric spaces) whose investigation dates back to the early 20th century and are of classical interest in metric geometry.
翻译:本文论述在数据研究中出现的功能性计量几何学问题,如几何域或加权网络节点上记录的信号,由这类物体组成的数据集出现在科学和实际感兴趣的许多领域,例如,美元可以代表功能性磁共振图像,或带有属性或偏好的社会网络节点,其基本计量结构由最短的路径距离、通勤距离或扩散距离给定。形式上,这些可被视为在计量空间上界定的功能,有时配备额外结构,如概率测量,在这种情况下,域被称为计量空间,或仅仅是美元-空间。我们的首要目标有三:(一) 制定衡量标准,使我们能够建模和量化功能性数据的变异,可能具有不同领域;(二) 调查对这些计量尺度的有原则性的经验性估计;(三) 构建一种通用功能,即“Ccontaintable's的所有功能都是波兰的(可分隔和完整的度度)空间,假定利普西茨定度。后一种精神是建立基础空间的早期精神,也就是在20世纪内建立基础空间,以历史测量为基准。