广义均匀性检验

Tugkan Batu, C. Canonne
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引用次数: 32

摘要

在这项工作中,我们重新审视了离散概率分布的均匀性检验问题。分布测试中的一个基本问题是,已知领域的测试一致性已经在一系列重要的工作中得到了解决,并且现在已经完全被理解了。然而,决定未知分布在其未知(和任意)支持上是否均匀的复杂性却不太清楚。然而,只要在该领域没有可用的先验知识,或者当样本来自未知和非结构化的宇宙时,这个任务就会出现。本文引入并研究了广义均匀性检验问题,建立了近似紧上界和下界,表明–非常令人惊讶–其样本复杂度明显不同于已知域的情况。此外,与绝大多数已知的分布测试算法相比,我们的算法本质上是自适应的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalized Uniformity Testing
In this work, we revisit the problem of uniformity testing of discrete probability distributions. A fundamental problem in distribution testing, testing uniformity over a known domain has been addressed over a significant line of works, and is by now fully understood. The complexity of deciding whether an unknown distribution is uniform over its unknown (and arbitrary) support, however, is much less clear. Yet, this task arises as soon as no prior knowledge on the domain is available, or whenever the samples originate from an unknown and unstructured universe.In this work, we introduce and study this generalized uniformity testing question, and establish nearly tight upper and lower bound showing that – quite surprisingly – its sample complexity significantly differs from the known-domain case. Moreover, our algorithm is intrinsically adaptive, in contrast to the overwhelming majority of known distribution testing algorithms.
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