模型计数满足F0估计

IF 2.2 2区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
A. Pavan, N. V. Vinodchandran, Arnab Bhattacharyya, Kuldeep S. Meel
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引用次数: 0

摘要

约束满足问题(CSP)和数据流模型是捕获计算机科学不同领域中出现的各种问题的两个强大的抽象。两个社区的发展大多是独立发生的,它们之间很少相互作用。在这项工作中,我们试图调查弥合两个社区之间表面上的沟通差距是否可以为更丰富的基本见解铺平道路。为此,我们关注两个基本问题:CSP的模型计数和数据流的零频率矩(F0)的计算。我们的调查使我们观察到在算法框架中采用的核心技术具有惊人的相似性,这些算法框架分别为模型计数和F0计算而发展。我们设计了一种将用于F0估计的算法转换为模型计数的方法,从而产生了用于模型计数的新算法。我们还提供了一种将采样算法转换为约束采样算法的方法。然后我们观察到分布式流上下文中的算法可以转换为用于模型计数的分布式算法。接下来,我们将注意力转向从计数的角度来观察流,并表明将F0估计作为#DNF计数的特殊情况,使我们能够获得一类丰富的流问题的通用配方,这些问题在以前的工作中已经受到具体情况的分析。特别是,我们的视图通过更简单的分析产生了多维范围有效F0估计的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model Counting meets F0 Estimation

Constraint satisfaction problems (CSP’s) and data stream models are two powerful abstractions to capture a wide variety of problems arising in different domains of computer science. Developments in the two communities have mostly occurred independently and with little interaction between them. In this work, we seek to investigate whether bridging the seeming communication gap between the two communities may pave the way to richer fundamental insights. To this end, we focus on two foundational problems: model counting for CSP’s and computation of zeroth frequency moments (F0) for data streams.

Our investigations lead us to observe a striking similarity in the core techniques employed in the algorithmic frameworks that have evolved separately for model counting and F0 computation. We design a recipe for translating algorithms developed for F0 estimation to model counting, resulting in new algorithms for model counting. We also provide a recipe for transforming sampling algorithm over streams to constraint sampling algorithms. We then observe that algorithms in the context of distributed streaming can be transformed into distributed algorithms for model counting. We next turn our attention to viewing streaming from the lens of counting and show that framing F0 estimation as a special case of #DNF counting allows us to obtain a general recipe for a rich class of streaming problems, which had been subjected to case-specific analysis in prior works. In particular, our view yields an algorithm for multidimensional range efficient F0 estimation with a simpler analysis.

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来源期刊
ACM Transactions on Database Systems
ACM Transactions on Database Systems 工程技术-计算机:软件工程
CiteScore
5.60
自引率
0.00%
发文量
15
审稿时长
>12 weeks
期刊介绍: Heavily used in both academic and corporate R&D settings, ACM Transactions on Database Systems (TODS) is a key publication for computer scientists working in data abstraction, data modeling, and designing data management systems. Topics include storage and retrieval, transaction management, distributed and federated databases, semantics of data, intelligent databases, and operations and algorithms relating to these areas. In this rapidly changing field, TODS provides insights into the thoughts of the best minds in database R&D.
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