k-Variance: A Clustered Notion of Variance

IF 2.6 Q1 MATHEMATICS, APPLIED SIAM journal on mathematics of data science Pub Date : 2020-12-13 DOI:10.1137/20m1385895
J. Solomon, Kristjan H. Greenewald, H. Nagaraja
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引用次数: 3

Abstract

We introduce $k$-variance, a generalization of variance built on the machinery of random bipartite matchings. $K$-variance measures the expected cost of matching two sets of $k$ samples from a distribution to each other, capturing local rather than global information about a measure as $k$ increases; it is easily approximated stochastically using sampling and linear programming. In addition to defining $k$-variance and proving its basic properties, we provide in-depth analysis of this quantity in several key cases, including one-dimensional measures, clustered measures, and measures concentrated on low-dimensional subsets of $\mathbb R^n$. We conclude with experiments and open problems motivated by this new way to summarize distributional shape.
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k-方差:方差的聚类概念
我们引入$k$-variance,一个建立在随机二部匹配机制上的方差的泛化。$K$-variance衡量从一个分布中匹配两组$K$样本的预期成本,随着$K$的增加,捕获有关度量的局部信息而不是全局信息;它很容易用抽样和线性规划进行随机逼近。除了定义$k$方差并证明其基本性质之外,我们还在几个关键情况下对这个量进行了深入分析,包括一维度量、聚类度量和集中在$\mathbb R^n$的低维子集上的度量。最后,我们用实验和开放性问题来总结这种新的分布形状。
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