走向绿色:循环利用和重复使用频繁的图案

G. Cong, B. Ooi, K. Tan, A. Tung
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引用次数: 7

摘要

在有约束的数据挖掘中,用户可以指定约束来修剪搜索空间,以避免挖掘不感兴趣的知识。这通常是通过指定约束的一些初始值来完成的,这些值随后被迭代地改进,直到获得满意的结果。现有的挖掘方案将每次迭代视为一个独立的挖掘过程,无法利用迭代之间生成的信息。我们建议挽救从早期迭代挖掘中发现的知识,以增强后续的挖掘。特别地,我们将研究如何频繁地循环模式。我们建议的策略分两个阶段实施。在第一阶段,使用从早期迭代中获得的频繁模式来压缩数据库。在第二阶段,后续挖掘过程对压缩数据库进行操作。我们提出了两种压缩策略,并采用了现有的三种频繁模式挖掘技术来利用压缩后的数据库。我们广泛的实验研究结果表明,我们提出的回收算法在一个数量级上优于非回收算法。
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Go green: recycle and reuse frequent patterns
In constrained data mining, users can specify constraints to prune the search space to avoid mining uninteresting knowledge. This is typically done by specifying some initial values of the constraints that are subsequently refined iteratively until satisfactory results are obtained. Existing mining schemes treat each iteration as a distinct mining process, and fail to exploit the information generated between iterations. We propose to salvage knowledge that is discovered from an earlier iteration of mining to enhance subsequent rounds of mining. In particular, we look at how frequent patterns can be recycled. Our proposed strategy operates in two phases. In the first phase, frequent patterns obtained from an early iteration are used to compress a database. In the second phase, subsequent mining processes operate on the compressed database. We propose two compression strategies and adapt three existing frequent pattern mining techniques to exploit the compressed database. Results from our extensive experimental study show that our proposed recycling algorithms outperform their nonrecycling counterpart by an order of magnitude.
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