Persistence diagrams are common descriptors of the topological structure of data appearing in various classification and regression tasks. They can be generalized to Radon measures supported on the birth-death plane and endowed with an optimal transport distance. Examples of such measures are expectations of probability distributions on the space of persistence diagrams. In this paper, we develop methods for approximating continuous functions on the space of Radon measures supported on the birth-death plane, as well as their utilization in supervised learning tasks. Indeed, we show that any continuous function defined on a compact subset of the space of such measures (e.g., a classifier or regressor) can be approximated arbitrarily well by polynomial combinations of features computed using a continuous compactly supported function on the birth-death plane (a template). We provide insights into the structure of relatively compact subsets of the space of Radon measures, and test our approximation methodology on various data sets and supervised learning tasks.
翻译:持久性图表是各种分类和回归任务中出现的数据表层结构的常见描述符,可被概括为在生死平面上支持的、具有最佳迁移距离的拉松措施。这类措施的例子有持久性图空间的概率分布的预期。在本文中,我们开发了在生死平面上支持的拉松措施空间上近似连续功能以及将其用于受监督的学习任务的方法。事实上,我们表明,在这类措施空间的紧凑子组(例如,分类器或递归器)上界定的任何连续功能都可以任意地被利用在生死平面上持续集中支持的功能(一个模板)计算特征的多元组合所近似。我们提供了对拉松措施空间相对紧凑的子组结构的深入了解,并测试我们关于各种数据集和受监督的学习任务的近似方法。