The density of expected persistence diagrams and its kernel based estimation

F. Chazal, Vincent Divol
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引用次数: 47

Abstract

Persistence diagrams play a fundamental role in Topological Data Analysis where they are used as topological descriptors of filtrations built on top of data. They consist in discrete multisets of points in the plane $\mathbb{R}^2$ that can equivalently be seen as discrete measures in $\mathbb{R}^2$. When the data come as a random point cloud, these discrete measures become random measures whose expectation is studied in this paper. First, we show that for a wide class of filtrations, including the \v{C}ech and Rips-Vietoris filtrations, the expected persistence diagram, that is a deterministic measure on $\mathbb{R}^2$ , has a density with respect to the Lebesgue measure. Second, building on the previous result we show that the persistence surface recently introduced in [Adams & al., Persistence images: a stable vector representation of persistent homology] can be seen as a kernel estimator of this density. We propose a cross-validation scheme for selecting an optimal bandwidth, which is proven to be a consistent procedure to estimate the density.
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期望持久性图的密度及其基于核的估计
持久性图在拓扑数据分析中扮演着重要的角色,它们被用作构建在数据之上的过滤的拓扑描述符。它们由平面$\mathbb{R}^2$中的离散多集点组成,这些点可以等价地看作$\mathbb{R}^2$中的离散测度。当数据以随机点云的形式出现时,这些离散测度变成随机测度,本文研究了随机测度的期望。首先,我们证明了对于一类广泛的过滤,包括\v{C}ech和ripps - vietoris过滤,期望持久性图,即$\mathbb{R}^2$上的确定性度量,相对于Lebesgue度量具有密度。其次,基于之前的结果,我们表明最近在[Adams & al., persistence images: persistent homology的稳定向量表示]中引入的持久性表面可以被视为该密度的核估计器。我们提出了一种选择最优带宽的交叉验证方案,该方案被证明是估计密度的一致过程。
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来源期刊
CiteScore
0.80
自引率
0.00%
发文量
4
审稿时长
>12 weeks
期刊介绍: The International Journal of Computational Geometry & Applications (IJCGA) is a quarterly journal devoted to the field of computational geometry within the framework of design and analysis of algorithms. Emphasis is placed on the computational aspects of geometric problems that arise in various fields of science and engineering including computer-aided geometry design (CAGD), computer graphics, constructive solid geometry (CSG), operations research, pattern recognition, robotics, solid modelling, VLSI routing/layout, and others. Research contributions ranging from theoretical results in algorithm design — sequential or parallel, probabilistic or randomized algorithms — to applications in the above-mentioned areas are welcome. Research findings or experiences in the implementations of geometric algorithms, such as numerical stability, and papers with a geometric flavour related to algorithms or the application areas of computational geometry are also welcome.
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