Families of Well Approximable Measures

S. Fairchild, Max Goering, Christian Weiss
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引用次数: 2

Abstract

Abstract We provide an algorithm to approximate a finitely supported discrete measure μ by a measure νN corresponding to a set of N points so that the total variation between μ and νN has an upper bound. As a consequence if μ is a (finite or infinitely supported) discrete probability measure on [0, 1]d with a sufficient decay rate on the weights of each point, then μ can be approximated by νN with total variation, and hence star-discrepancy, bounded above by (log N)N−1. Our result improves, in the discrete case, recent work by Aistleitner, Bilyk, and Nikolov who show that for any normalized Borel measure μ, there exist finite sets whose star-discrepancy with respect to μ is at most (log N)d−12N−1 {\left( {\log \,N} \right)^{d - {1 \over 2}}}{N^{ - 1}} . Moreover, we close a gap in the literature for discrepancy in the case d =1 showing both that Lebesgue is indeed the hardest measure to approximate by finite sets and also that all measures without discrete components have the same order of discrepancy as the Lebesgue measure.
非常近似测度族
摘要给出了一种用N个点对应的测度νN来近似有限支持离散测度μ的算法,使得μ与νN之间的总变化有上界。因此,如果μ是[0,1]d上的一个(有限或无限支持的)离散概率测度,并且每个点的权值有足够的衰减率,那么μ可以用νN近似,并具有全变分,因此星差以(log N)N−1为界。在离散情况下,我们的结果改进了astleitner, Bilyk和Nikolov最近的工作,他们表明对于任何归一化Borel测度μ,存在有限集,其星差相对于μ的最大值为(log N)d−12N−1 {\left ({\log \,N }\right)^{d -{ 1 \over 2N^}}}{ - 1{。此外,我们填补了文献中d =1情况下差异的空白,表明Lebesgue确实是最难用有限集近似的度量,并且所有没有离散分量的度量都具有与Lebesgue度量相同的差异阶数。}}
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