在线列表标签:打破[数学]障碍

IF 1.2 3区 计算机科学 Q3 COMPUTER SCIENCE, THEORY & METHODS SIAM Journal on Computing Pub Date : 2024-04-11 DOI:10.1137/22m1534468
Michael A. Bender, Alex Conway, Martín Farach-Colton, Hanna Komlós, William Kuszmaul, Nicole Wein
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引用次数: 0

摘要

SIAM 计算期刊》,提前印刷。 摘要在线列表标注问题是一个算法基元问题,有大量关于上界、下界和应用的文献。其目标是将一组动态变化的[math]项存储在一个由[math]槽组成的数组中,同时保持这些项按排序顺序出现的不变性,并最大限度地降低重新标注的成本(定义为每次插入/删除所移动的项数)。对于[math]的线性机制,重新标注成本的[math]上限早在 1981 年就已经存在。对于确定性算法和所谓的平滑算法,[math]的下界是已知的,但最佳的一般下界仍然是[math]。该领域的核心未决问题是,[math] 是否是所有算法的最优解。在本文中,我们给出了一种随机数据结构,它能使每次操作的预期重新标注成本达到 [math]。更一般地说,如果[数学]为[数学],则预期重新标注成本变为[数学]。我们的解决方案与历史无关,这意味着数据结构的状态与项目的插入/删除顺序无关。对于独立于历史的数据结构,我们还证明了一个匹配的下界:对于介于 [math] 和某个足够小的正常数之间的所有 [math],独立于历史的列表标签解决方案的最优预期成本为 [math]。
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Online List Labeling: Breaking the [math] Barrier
SIAM Journal on Computing, Ahead of Print.
Abstract. The online list-labeling problem is an algorithmic primitive with a large literature of upper bounds, lower bounds, and applications. The goal is to store a dynamically changing set of [math] items in an array of [math] slots, while maintaining the invariant that the items appear in sorted order and while minimizing the relabeling cost, defined to be the number of items that are moved per insertion/deletion. For the linear regime, where [math], an upper bound of [math] on the relabeling cost has been known since 1981. A lower bound of [math] is known for deterministic algorithms and for so-called smooth algorithms, but the best general lower bound remains [math]. The central open question in the field is whether [math] is optimal for all algorithms. In this paper, we give a randomized data structure that achieves an expected relabeling cost of [math] per operation. More generally, if [math] for [math], the expected relabeling cost becomes [math]. Our solution is history independent, meaning that the state of the data structure is independent of the order in which items are inserted/deleted. For history-independent data structures, we also prove a matching lower bound: for all [math] between [math] and some sufficiently small positive constant, the optimal expected cost for history-independent list-labeling solutions is [math].
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来源期刊
SIAM Journal on Computing
SIAM Journal on Computing 工程技术-计算机:理论方法
CiteScore
4.60
自引率
0.00%
发文量
68
审稿时长
6-12 weeks
期刊介绍: The SIAM Journal on Computing aims to provide coverage of the most significant work going on in the mathematical and formal aspects of computer science and nonnumerical computing. Submissions must be clearly written and make a significant technical contribution. Topics include but are not limited to analysis and design of algorithms, algorithmic game theory, data structures, computational complexity, computational algebra, computational aspects of combinatorics and graph theory, computational biology, computational geometry, computational robotics, the mathematical aspects of programming languages, artificial intelligence, computational learning, databases, information retrieval, cryptography, networks, distributed computing, parallel algorithms, and computer architecture.
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