Approximation of Discrete Measures by Finite Point Sets

Christian Weiss
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引用次数: 1

Abstract

Abstract For a probability measure μ on [0, 1] without discrete component, the best possible order of approximation by a finite point set in terms of the star-discrepancy is &inline as has been proven relatively recently. However, if μ contains a discrete component no non-trivial lower bound holds in general because it is straightforward to construct examples without any approximation error in this case. This might explain, why the approximation of discrete measures on [0, 1] by finite point sets has so far not been completely covered in the existing literature. In this note, we close the gap by giving a complete description for discrete measures. Most importantly, we prove that for any discrete measures (not supported on one point only) the best possible order of approximation is for infinitely many N bounded from below by &inline for some constant 6 ≥ c> 2 which depends on the measure. This implies, that for a finitely supported discrete measure on [0, 1]d the known possible order of approximation &inline is indeed the optimal one.
用有限点集逼近离散测度
摘要对于无离散分量的概率测度μ on[0,1],有限点集根据星差的最佳逼近阶数是&inline,这是最近得到的证明。然而,如果μ包含一个离散分量,一般不存在非平凡下界,因为在这种情况下构造示例很简单,没有任何近似误差。这也许可以解释,为什么有限点集在[0,1]上的离散测度的近似到目前为止还没有完全覆盖在现有文献中。在本文中,我们通过给出离散度量的完整描述来缩小差距。最重要的是,我们证明了对于任何离散测度(不支持仅在一点上),对于无限多个N,对于某些常数6≥c> 2,可能的最佳逼近阶是由&内嵌的,这取决于测度。这意味着,对于[0,1]d上有限支持的离散测度,已知的逼近&内联可能阶数确实是最优阶数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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