循环关联规则

Banu Özden, S. Ramaswamy, A. Silberschatz
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引用次数: 493

摘要

我们研究了发现随时间周期性变化的关联规则的问题。例如,如果我们计算月度销售数据的关联规则,我们可能会观察到季节变化,其中某些规则在每年大约相同的月份是正确的。类似地,关联规则也可以显示有规律的每小时、每天、每周等,这些变化本质上是周期性的。我们证明了现有的方法不能被天真地扩展来解决这个循环关联规则问题。然后,我们提出了两种新的算法来发现这些规则。第一种算法,我们称之为顺序算法,它或多或少独立地处理关联规则和循环。通过研究关联规则与时间之间的相互作用,我们设计了一种新的循环剪枝技术,减少了查找循环关联规则所需的时间。第二种算法,我们称之为交错算法,使用循环剪枝和其他优化技术来发现循环关联规则。我们通过一系列的实验证明了交错算法的有效性。这些实验表明,与顺序算法相比,交错算法可以产生显着的性能优势。性能改进范围从5%到数百%不等。
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Cyclic association rules
We study the problem of discovering association rules that display regular cyclic variation over time. For example, if we compute association rules over monthly sales data, we may observe seasonal variation where certain rules are true at approximately the same month each year. Similarly, association rules can also display regular hourly, daily, weekly, etc., variation that is cyclical in nature. We demonstrate that existing methods cannot be naively extended to solve this problem of cyclic association rules. We then present two new algorithms for discovering such rules. The first one, which we call the sequential algorithm, treats association rules and cycles more or less independently. By studying the interaction between association rules and time, we devise a new technique called cycle pruning, which reduces the amount of time needed to find cyclic association rules. The second algorithm, which we call the interleaved algorithm, uses cycle pruning and other optimization techniques for discovering cyclic association rules. We demonstrate the effectiveness of the interleaved algorithm through a series of experiments. These experiments show that the interleaved algorithm can yield significant performance benefits when compared to the sequential algorithm. Performance improvements range from 5% to several hundred percent.
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