子模最大化的单向通信复杂度及其在流和鲁棒性中的应用

IF 2.3 2区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Journal of the ACM Pub Date : 2023-04-24 DOI:https://dl.acm.org/doi/10.1145/3588564
Moran Feldman, Ashkan Norouzi-Fard, Ola Svensson, Rico Zenklusen
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引用次数: 0

摘要

我们考虑了受基数约束的单调次模函数最大化的经典问题,由于其众多的应用,最近在各种计算模型中进行了研究。我们考虑了一种介于离线和流模型之间的干净的多播放器模型,并从单向通信复杂性的角度对其进行了研究。我们的模型捕获了流设置(通过考虑大量的玩家),此外,它的两个玩家近似结果转化为鲁棒设置。我们为我们的模型提供了紧密的单向通信复杂性结果,由于上述联系,该模型在数据流和鲁棒设置中具有多重含义。即使只有两个玩家,先前的信息论硬度结果意味着,如果只允许查询可行集,即尊重基数约束的集,则在我们的模型中不能实现超过1/2的近似因子。我们展示了查询不可行集的可能性实际上可以被利用来打破这个界限,通过给出一个紧的2/3近似,花费指数时间,和一个有效的0.514近似。据我们所知,这是在不可行的集合上查询子模函数导致可证明的更好结果的第一个示例。通过上述链接到(非流)鲁棒设置,这两种算法都改进了当前最先进的鲁棒次模最大化,表明近似因子超过1/2是可能的。此外,利用我们的模型与流媒体的联系,我们在构建新的覆盖函数族的基础上,通过给出紧密的1/2 + ε硬度结果来解决流媒体算法的近似性。这改进了先前的0.586硬度,并匹配到任意小的裕度,这是最著名的近似算法。
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The One-Way Communication Complexity of Submodular Maximization with Applications to Streaming and Robustness

We consider the classical problem of maximizing a monotone submodular function subject to a cardinality constraint, which, due to its numerous applications, has recently been studied in various computational models. We consider a clean multi-player model that lies between the offline and streaming model, and study it under the aspect of one-way communication complexity. Our model captures the streaming setting (by considering a large number of players), and, in addition, two player approximation results for it translate into the robust setting. We present tight one-way communication complexity results for our model, which, due to the above-mentioned connections, have multiple implications in the data stream and robust setting.

Even for just two players, a prior information-theoretic hardness result implies that no approximation factor above 1/2 can be achieved in our model, if only queries to feasible sets, i.e., sets respecting the cardinality constraint, are allowed. We show that the possibility of querying infeasible sets can actually be exploited to beat this bound, by presenting a tight 2/3-approximation taking exponential time, and an efficient 0.514-approximation. To the best of our knowledge, this is the first example where querying a submodular function on infeasible sets leads to provably better results. Through the above-mentioned link to the (non-streaming) robust setting, both of these algorithms improve on the current state-of-the-art for robust submodular maximization, showing that approximation factors beyond 1/2 are possible. Moreover, exploiting the link of our model to streaming, we settle the approximability for streaming algorithms by presenting a tight 1/2 + ε hardness result, based on the construction of a new family of coverage functions. This improves on a prior 0.586 hardness and matches, up to an arbitrarily small margin, the best known approximation algorithm.

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来源期刊
Journal of the ACM
Journal of the ACM 工程技术-计算机:理论方法
CiteScore
7.50
自引率
0.00%
发文量
51
审稿时长
3 months
期刊介绍: The best indicator of the scope of the journal is provided by the areas covered by its Editorial Board. These areas change from time to time, as the field evolves. The following areas are currently covered by a member of the Editorial Board: Algorithms and Combinatorial Optimization; Algorithms and Data Structures; Algorithms, Combinatorial Optimization, and Games; Artificial Intelligence; Complexity Theory; Computational Biology; Computational Geometry; Computer Graphics and Computer Vision; Computer-Aided Verification; Cryptography and Security; Cyber-Physical, Embedded, and Real-Time Systems; Database Systems and Theory; Distributed Computing; Economics and Computation; Information Theory; Logic and Computation; Logic, Algorithms, and Complexity; Machine Learning and Computational Learning Theory; Networking; Parallel Computing and Architecture; Programming Languages; Quantum Computing; Randomized Algorithms and Probabilistic Analysis of Algorithms; Scientific Computing and High Performance Computing; Software Engineering; Web Algorithms and Data Mining
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