Online algorithms with advice

Hans-Joachim Bröckenhauer, D. Komm, Rastislav KráloviÄ, Richard KráloviÄ, Tobias Mömke
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引用次数: 15

Abstract

In online problems, the input forms a finite sequence of requests. Each request must be processed, i. e., a partial output has to be computed only depending on the requests having arrived so far, and it is not allowed to change this partial output subsequently. The aim of an online algorithm is to produce a sequence of partial outputs that optimizes some global measure. The most frequently used tool for analyzing the quality of online algorithms is the competitive analysis which compares the solution quality of an online algorithm to the optimal solution for the whole input sequence, and in fact measures the degradation in the solution quality caused by the lack of any information about the input. In this paper, we investigate to what extent the solution quality can be improved by allowing the algorithm to extract a given amount of information about the input. We consider the recently introduced notion of advice complexity where the algorithm, in addition to being fed the requests one by one, has access to a tape of advice bits that were computed by some oracle function from the complete input. The advice complexity is the number of advice bits read. We introduce an improved model of advice complexity and investigate the connections of advice complexity to the competitive ratio of both deterministic and randomized online algorithms using the paging problem, job shop scheduling, and the routing problem on a line as sample problems. Our results for all of these problems show that very small advice (only three bits in the case of paging) already suffices to significantly improve over the best deterministic algorithm. Moreover, to achieve the same competitive ratio as any randomized online algorithm, a logarithmic number of advice bits is sufficient. On the other hand, to obtain optimality, much larger advice is necessary.
带有建议的在线算法
在联机问题中,输入形成一个有限的请求序列。必须处理每个请求,也就是说,必须仅根据到目前为止到达的请求计算部分输出,并且不允许随后更改该部分输出。在线算法的目的是产生一个局部输出序列,以优化某些全局度量。分析在线算法质量最常用的工具是竞争分析,它将在线算法的解质量与整个输入序列的最优解进行比较,实际上是测量由于缺乏关于输入的任何信息而导致的解质量的下降。在本文中,我们研究了通过允许算法提取给定数量的输入信息,可以在多大程度上提高解的质量。我们考虑了最近引入的建议复杂性的概念,其中算法除了一个接一个地提供请求之外,还可以访问由某个oracle函数从完整输入中计算出来的建议位磁带。通知复杂度是指读取的通知位的数量。我们引入了一种改进的通知复杂度模型,并以寻呼问题、作业车间调度问题和线路上的路由问题为例,研究了通知复杂度与确定性和随机在线算法的竞争比之间的关系。我们对所有这些问题的结果表明,非常小的建议(在分页的情况下只有3位)已经足以显著改进最佳确定性算法。此外,为了达到与任何随机在线算法相同的竞争比,建议位的对数个数就足够了。另一方面,为了获得最优性,需要更大的通知。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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