一种基于模式匹配的通用在线缓存算法

Gopal Pandurangan, W. Szpankowski
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引用次数: 0

摘要

我们提出了一种通用算法来解决经典的在线缓存或需求分页问题。我们考虑了页面请求序列来自未知概率分布时的缓存问题,目标是设计一种性能接近完全了解底层分布的最优在线算法的高效算法。大多数以前的工作已经为特定类别的分布设计了这样的算法,并假设算法对源有充分的了解。本文提出了一种通用的、简单的混合源(包括马尔可夫源)模式匹配算法。我们算法的预期性能是最优在线算法的4 + 0(1)倍(最优在线算法对输入模型有充分的了解,可以使用无界资源)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A universal online caching algorithm based on pattern matching
We present a universal algorithm for the classical online problem of caching or demand paging. We consider the caching problem when the page request sequence is drawn from an unknown probability distribution and the goal is to devise an efficient algorithm whose performance is close to the optimal online algorithm which has full knowledge of the underlying distribution. Most previous works have devised such algorithms for specific classes of distributions with the assumption that the algorithm has full knowledge of the source. In this paper, we present a universal and simple algorithm based on pattern matching for mixing sources (includes Markov sources). The expected performance of our algorithm is within 4 + o(1) times the optimal online algorithm (which has full knowledge of the input model and can use unbounded resources)
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