Summarizing Hierarchical Multidimensional Data

Alexandra Kim, L. Lakshmanan, D. Srivastava
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引用次数: 9

Abstract

Data scientists typically analyze and extract insights from large multidimensional data sets such as US census data, enterprise sales data, and so on. But before sophisticated machine learning and statistical methods are employed, it is useful to build and explore concise summaries of the data set. While a variety of summaries have been proposed over the years, the goal of creating a concise summary of multidimensional data that can provide worst-case accuracy guarantees has remained elusive. In this paper, we propose Tree Summaries, which attain this challenging goal over arbitrary hierarchical multidimensional data sets. Intuitively, a Tree Summary is a weighted "embedded tree" in the lattice that is the cross-product of the dimension hierarchies; individual data values can be efficiently estimated by looking up the weight of their unique closest ancestor in the Tree Summary. We study the problems of generating lossless as well as (given a desired worst-case accuracy guarantee a) lossy Tree Summaries. We develop a polynomial-time algorithm that constructs the optimal (i.e., most concise) Tree Summary for each of these problems; this is a surprising result given the NP-hardness of constructing a variety of other optimal summaries over multidimensional data. We complement our analytical results with an empirical evaluation of our algorithm, and demonstrate with a detailed set of experiments on real and synthetic data sets that our algorithm outperforms prior methods in terms of conciseness of summaries or accuracy of estimation.
分层多维数据汇总
数据科学家通常从大型多维数据集(如美国人口普查数据、企业销售数据等)中分析和提取见解。但在使用复杂的机器学习和统计方法之前,构建和探索数据集的简明摘要是有用的。虽然多年来已经提出了各种各样的摘要,但创建能够提供最坏情况准确性保证的多维数据的简明摘要的目标仍然难以实现。在本文中,我们提出了树摘要,它在任意层次多维数据集上实现了这一具有挑战性的目标。直观地说,Tree Summary是格中的加权“嵌入树”,是维度层次的交叉积;可以通过在Tree Summary中查找其唯一的最近祖先的权重来有效地估计单个数据值。我们研究了产生无损和(给定最坏情况精度保证a)有损树摘要的问题。我们开发了一个多项式时间算法,为每个问题构建最优(即最简洁)的树摘要;考虑到在多维数据上构造各种其他最优摘要的np -硬度,这是一个令人惊讶的结果。我们通过对算法的经验评估来补充我们的分析结果,并通过对真实和合成数据集的详细实验来证明,我们的算法在摘要的简洁性或估计的准确性方面优于先前的方法。
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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