最优到达估计和度量学习

Eddie Aamari, Cl'ement Berenfeld, Clément Levrard
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引用次数: 5

摘要

研究了在流形估计和几何数据分析中普遍存在的正则参数——到达量的估计。在未知的$\mathbb{R}^ d的$\mathbb{R}^ d的$\mathcal{C}^k$光滑子流形上给定一个i. id样本,我们提供了估计其到达的最优非渐近界。我们一方面建立在最大曲率方面的范围公式,另一方面建立在测地线度量失真方面的公式。导出的速率是自适应的,速率取决于$M$的范围是来自曲率还是来自瓶颈结构。在此过程中,我们导出了最优测地线度量估计界。
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Optimal reach estimation and metric learning
We study the estimation of the reach, an ubiquitous regularity parameter in manifold estimation and geometric data analysis. Given an i.i.d. sample over an unknown $d$-dimensional $\mathcal{C}^k$-smooth submanifold of $\mathbb{R}^D$, we provide optimal nonasymptotic bounds for the estimation of its reach. We build upon a formulation of the reach in terms of maximal curvature on one hand, and geodesic metric distortion on the other hand. The derived rates are adaptive, with rates depending on whether the reach of $M$ arises from curvature or from a bottleneck structure. In the process, we derive optimal geodesic metric estimation bounds.
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