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Nonparametric Estimation of Probability Density Functions of Random Persistence Diagrams

机译:随机持久性图的概率密度函数的非参数估计

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Topological data analysis refers to a broad set of techniques that are used to make inferences about the shape of data. A popular topological summary is the persistence diagram. Through the language of random sets, we describe a notion of global probability density function for persistence diagrams that fully characterizes their behavior and in part provides a noise likelihood model. Our approach encapsulates the number of topological features and considers the appearance or disappearance of those near the diagonal in a stable fashion. In particular, the structure of our kernel individually tracks long persistence features, while considering those near the diagonal as a collective unit. The choice to describe short persistence features as a group reduces computation time while simultaneously retaining accuracy. Indeed, we prove that the associated kernel density estimate converges to the true distribution as the number of persistence diagrams increases and the bandwidth shrinks accordingly. We also establish the convergence of the mean absolute deviation estimate, defined according to the bottleneck metric. Lastly, examples of kernel density estimation are presented for typical underlying datasets as well as for virtual electroencephalographic data related to cognition.
机译:拓扑数据分析是指用于对数据形状进行推断的广泛的技术。流行的拓扑摘要是持久性图。通过随机集的语言,我们描述了全局概率密度函数的概念,用于完全表征其行为的持久性图,并且部分提供了噪声似然模型。我们的方法封装了拓扑特征的数量,并以稳定的方式考虑那些靠近对角线附近的人的外观或消失。特别是,我们内核的结构单独跟踪长期持久性功能,同时考虑到对角线附近的那些作为集体单元。根据组描述短持久性功能的选择减少了计算时间,同时保持精度。实际上,我们证明,随着持久性图的数量增加并且带宽相应地缩小,相关的内核密度估计会聚到真正的分布。我们还建立了根据瓶颈度量定义的平均绝对偏差估计的收敛性。最后,呈现内核密度估计的示例,用于典型的底层数据集以及与认知有关的虚拟脑电图数据。

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