记忆有限的统计推断:调查

Tomer Berg;Or Ordentlich;Ofer Shayevitz
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引用次数: 0

摘要

几十年来,人们一直在广泛研究各种形式的统计推断问题。大部分研究工作都集中在描述可用样本数量对推理行为的影响,而对内存限制对推理性能影响的关注则少得多。最近,后一个话题引起了工程和计算机科学文献的极大兴趣。在这篇调查报告中,我们试图回顾在内存限制条件下,统计推断在几个典型问题中的最新进展,包括假设检验、参数估计和分布属性测试/估计。我们讨论了这一发展中领域的主要成果,并通过识别重复出现的主题,提取了算法构建的一些基本构件,以及用于下界推导的有用技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical Inference With Limited Memory: A Survey
The problem of statistical inference in its various forms has been the subject of decades-long extensive research. Most of the effort has been focused on characterizing the behavior as a function of the number of available samples, with far less attention given to the effect of memory limitations on performance. Recently, this latter topic has drawn much interest in the engineering and computer science literature. In this survey paper, we attempt to review the state-of-the-art of statistical inference under memory constraints in several canonical problems, including hypothesis testing, parameter estimation, and distribution property testing/estimation. We discuss the main results in this developing field, and by identifying recurrent themes, we extract some fundamental building blocks for algorithmic construction, as well as useful techniques for lower bound derivations.
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CiteScore
8.20
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