A Learned Approach to Design Compressed Rank/Select Data Structures

A. Boffa, P. Ferragina, Giorgio Vinciguerra
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引用次数: 16

Abstract

We address the problem of designing, implementing, and experimenting with compressed data structures that support rank and select queries over a dictionary of integers. We shine a new light on this classical problem by showing a connection between the input integers and the geometry of a set of points in a Cartesian plane suitably derived from them. We then build upon some results in computational geometry to introduce the first compressed rank/select dictionary based on the idea of “learning” the distribution of such points via proper linear approximations (LA). We therefore call this novel data structure the la_vector. We prove time and space complexities of the la_vector in several scenarios: in the worst case, in the case of input distributions with finite mean and variance, and taking into account the kth order entropy of some of its building blocks. We also discuss improved hybrid data structures, namely, ones that suitably orchestrate known compressed rank/select dictionaries with the la_vector. We corroborate our theoretical results with a large set of experiments over datasets originating from a variety of applications (Web search, DNA sequencing, information retrieval, and natural language processing) and show that our approach provides new interesting space-time tradeoffs with respect to many well-established compressed rank/select dictionary implementations. In particular, we show that our select is the fastest, and our rank is on the space-time Pareto frontier.
设计压缩排名/选择数据结构的学习方法
我们解决了设计、实现和实验压缩数据结构的问题,这些压缩数据结构支持对整数字典的排序和选择查询。我们通过展示输入整数与笛卡尔平面上由它们适当导出的一组点的几何形状之间的联系,为这个经典问题提供了新的思路。然后,我们以计算几何中的一些结果为基础,引入了基于“学习”这些点的分布(通过适当的线性近似(LA))的思想的第一个压缩秩/选择字典。因此,我们称这种新的数据结构为la_vector。我们在几种情况下证明了la_vector的时间和空间复杂性:在最坏的情况下,在具有有限均值和方差的输入分布的情况下,并考虑到它的一些构建块的k阶熵。我们还讨论了改进的混合数据结构,即使用la_vector适当地编排已知压缩排名/选择字典的混合数据结构。我们通过对来自各种应用程序(Web搜索、DNA测序、信息检索和自然语言处理)的数据集进行的大量实验来证实我们的理论结果,并表明我们的方法提供了关于许多已建立的压缩排名/选择字典实现的新的有趣的时空权衡。特别地,我们证明了我们的选择是最快的,我们的秩在时空帕累托边界上。
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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