联机生成关联规则

C. Aggarwal, Philip S. Yu
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引用次数: 150

摘要

我们有一个包含销售交易的大数据库。我们研究了该大型数据库中关联规则的在线挖掘问题。我们将展示如何有效地预处理数据,以使其适合重复的在线查询。预处理算法考虑了可用的存储空间。我们以这样一种方式存储预处理数据,在线处理可以通过应用图论搜索算法来完成,该算法的复杂性与输出的大小成正比。这就产生了一种在线算法,在响应时间方面几乎是瞬时的。该算法还支持从大型项目集中快速发现关联规则的技术。该算法能够在前句或后句中找到具有特定项的规则。这些关联规则以紧凑的形式呈现,消除了冗余。我们认为,从大型项目集在线生成关联规则时消除冗余本身就很有趣。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online generation of association rules
We have a large database consisting of sales transactions. We investigate the problem of online mining of association rules in this large database. We show how to preprocess the data effectively in order to make it suitable for repeated online queries. The preprocessing algorithm takes into account the storage space available. We store the preprocessed data in such a way that online processing may be done by applying a graph theoretic search algorithm whose complexity is proportional to the size of the output. This results in an online algorithm which is practically instantaneous in terms of response time. The algorithm also supports techniques for quickly discovering association rules from large item sets. The algorithm is capable of finding rules with specific items in the antecedent or consequent. These association rules are presented in a compact form, eliminating redundancy. We believe that the elimination of redundancy in online generation of association rules from large item sets is interesting in its own right.
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