贝蒂积分特征证实了大脑、气候和金融网络的双曲几何学

Luigi Caputi, Anna Pidnebesna, Jaroslav Hlinka
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摘要

本文在cliquetopology方法的基础上,使用贝蒂曲线(Persistent Homology的工具)作为关键拓扑描述符,通过拓扑学的视角扩展了研究数据潜在曲率的可能性。以前的研究表明,贝蒂曲线可以区分随机矩阵和欧几里得几何矩阵--即随机分布在具有欧几里得距离的立方体中的点的距离矩阵。与之前的实验一致,我们考虑了它们的低维近似值,即积分贝蒂值,或不仅能有效区分欧几里得几何矩阵,还能区分球面几何矩阵和双曲几何矩阵的特征,既能区分纯随机矩阵,也能区分它们之间的区别。为了证明这一点,我们分析了各种几何矩阵--即随机分布在恒定截面曲率流形上的点的距离矩阵--的贝蒂曲线行为,考虑了欧几里得空间、球面和双曲空间给出的曲率为 0、1、-1 的经典模型。我们进一步研究了积分贝蒂特征对样本大小和维度等因素的依赖性。这对于评估现实世界中的连通性矩阵非常重要,因为我们表明,网络构建的标准方法会产生(虚假的)球形几何,拓扑结构取决于采样维度。最后,我们使用恒定曲率流形作为比较模型来推断真实世界中神经科学、金融和气候数据集的曲率。这些数据集的相关拓扑特征显示出双曲特性:与这些数据集相关的积分贝蒂特征介于欧几里得和双曲(小曲率)之间。我们还通过模拟评估了内在低曲率流形结构可能产生的 "双曲效应"。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integral Betti signature confirms the hyperbolic geometry of brain, climate, and financial networks
This paper extends the possibility to examine the underlying curvature of data through the lens of topology by using the Betti curves, tools of Persistent Homology, as key topological descriptors, building on the clique topology approach. It was previously shown that Betti curves distinguish random from Euclidean geometric matrices - i.e. distance matrices of points randomly distributed in a cube with Euclidean distance. In line with previous experiments, we consider their low-dimensional approximations named integral Betti values, or signatures that effectively distinguish not only Euclidean, but also spherical and hyperbolic geometric matrices, both from purely random matrices as well as among themselves. To prove this, we analyse the behaviour of Betti curves for various geometric matrices -- i.e. distance matrices of points randomly distributed on manifolds of constant sectional curvature, considering the classical models of curvature 0, 1, -1, given by the Euclidean space, the sphere, and the hyperbolic space. We further investigate the dependence of integral Betti signatures on factors including the sample size and dimension. This is important for assessment of real-world connectivity matrices, as we show that the standard approach to network construction gives rise to (spurious) spherical geometry, with topology dependent on sample dimensions. Finally, we use the manifolds of constant curvature as comparison models to infer curvature underlying real-world datasets coming from neuroscience, finance and climate. Their associated topological features exhibit a hyperbolic character: the integral Betti signatures associated to these datasets sit in between Euclidean and hyperbolic (of small curvature). The potential confounding ``hyperbologenic effect'' of intrinsic low-rank modular structures is also evaluated through simulations.
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