Local Computation Algorithms

Shai Vardi, Ning Xie
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引用次数: 2

Abstract

Consider a setting in which inputs to and outputs from a computational problem are so large, that there is not time to read them in their entirety. However, if one is only interested in small parts of the output at any given time, is it really necessary to solve the entire computational problem? Is it even necessary to view the whole input? We survey recent work in the model of "local computation algorithms" which for a given input, supports queries by a user to values of specified bits of a legal output. The goal is to design local computation algorithms in such a way that very little of the input needs to be seen in order to determine the value of any single bit of the output. Though this model describes sequential computations, techniques from local distributed algorithms have been extremely important in designing efficient local computation algorithms. In this talk, we describe results on a variety of problems for which sublinear time and space local computation algorithms have been developed -- we will give special focus to finding maximal independent sets and sparse spanning graphs.
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局部计算算法
考虑这样一个设置,其中一个计算问题的输入和输出非常大,以至于没有时间完整地阅读它们。然而,如果在任何给定时间只对输出的一小部分感兴趣,那么真的有必要解决整个计算问题吗?有必要查看整个输入吗?我们调查了最近在“局部计算算法”模型中的工作,对于给定的输入,支持用户对合法输出的指定位的值进行查询。我们的目标是设计这样一种局部计算算法:只需看到很少的输入,就可以确定输出的任何单个位的值。虽然该模型描述的是顺序计算,但局部分布式算法的技术在设计高效的局部计算算法方面非常重要。在这次演讲中,我们描述了亚线性时间和空间局部计算算法已经开发的各种问题的结果-我们将特别关注寻找最大独立集和稀疏生成图。
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