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The VC Dimension of Metric Balls Under Fréchet and Hausdorff Distances

机译:Fréchet和Hausdorff距离下公制球的VC尺寸

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The Vapnik-Chervonenkis dimension provides a notion of complexity for systems of sets. If the VC dimension is small, then knowing this can drastically simplify fundamental computational tasks such as classification, range counting, and density estimation through the use of sampling bounds. We analyze set systems where the ground set X is a set of polygonal curves in R^d and the sets {R} are metric balls defined by curve similarity metrics, such as the Fréchet distance and the Hausdorff distance, as well as their discrete counterparts. We derive upper and lower bounds on the VC dimension that imply useful sampling bounds in the setting that the number of curves is large, but the complexity of the individual curves is small. Our upper bounds are either near-quadratic or near-linear in the complexity of the curves that define the ranges and they are logarithmic in the complexity of the curves that define the ground set.
机译:Vapnik-Chervonenkis维提供了集合系统的复杂性概念。如果VC维很小,那么知道这一点可以通过使用采样范围来大大简化基本的计算任务,例如分类,范围计数和密度估计。我们分析集合系统,其中地面集合X是R ^ d中的一组多边形曲线,集合{R}是由曲线相似性度量(例如Fréchet距离和Hausdorff距离)及其离散对等体定义的度量球。我们推导出VC维度的上限和下限,这意味着在曲线数量大但单个曲线的复杂度很小的情况下,有用的采样范围。在定义范围的曲线的复杂度上,我们的上限接近于二次或线性,而在定义地面集的曲线的复杂度上,我们在对数上。

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