使用频繁闭项集进行数据降维

Petr Krajča, Jan Outrata, Vilém Vychodil
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引用次数: 11

摘要

我们解决了事务数据集降维的重要问题,其中输入数据由事务列表组成,每个事务列表都是有限项集。减少包括找到一组小的新项目,即所谓的因子项目,它们比原来的项目要小得多,但包含了关于原来项目的全部或几乎全部的信息。使用这种类型的约简,原始数据集可以由使用因子项而不是原始项的更小的事务数据集表示,从而降低了其维数。本文所采用的方法是基于近似布尔矩阵分解。在本文中,我们主要讨论了频繁闭项集的作用,它可以用来确定因子项。我们提出了分解问题,将其简化为布尔矩阵分解,使用公开可用的数据集进行实验,以及计算分解的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Frequent Closed Itemsets for Data Dimensionality Reduction
We address important issues of dimensionality reduction of transactional data sets where the input data consists of lists of transactions, each of them being a finite set of items. The reduction consists in finding a small set of new items, so-called factor-items, which is considerably smaller than the original set of items while comprising full or nearly full information about the original items. Using this type of reduction, the original data set can be represented by a smaller transactional data set using factor-items instead of the original items, thus reducing its dimensionality. The procedure utilized in this paper is based on approximate Boolean matrix decomposition. In this paper, we focus on the role of frequent closed item sets that can be used to determine factor-items. We present the factorization problem, its reduction to Boolean matrix decompositions, experiments with publicly available data sets, and an algorithm for computing decompositions.
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