Mining sequential patterns using graph search techniques

Yin-Fu Huang, Shao-Yuan Lin
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引用次数: 51

Abstract

Sequential patterns discovery had emerged as an important problem in data mining. In this paper, we propose an effective GST algorithm for mining sequential patterns in a large transaction database. Different from the apriori-like algorithms, the GST algorithm can out of order find large k-sequences (k >= 3);i.e., we can find large k-sequences not directly through large (k-1)-sequences. This leads to that our algorithm has much better performance than the Apriori-like algorithms. Besides, we also propose the method to find new sequential patterns by scanning only new transactions since the database was increased. Through several comprehensive experiments, the GST algorithm gains a significant performance improvement over the Apriori-like algorithms. Also we found as long as the ratio of the items purchased in new transactions is always much better than scanning the entire database.
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使用图搜索技术挖掘顺序模式
序列模式发现已成为数据挖掘中的一个重要问题。在本文中,我们提出了一种有效的GST算法来挖掘大型事务数据库中的顺序模式。与类先验算法不同的是,GST算法可以无序地找到较大的k序列(k >= 3),即:,我们可以找到大的k序列,而不是直接通过大的(k-1)序列。这导致我们的算法比apriori类算法有更好的性能。此外,我们还提出了自数据库增加以来通过仅扫描新事务来查找新顺序模式的方法。经过多次综合实验,GST算法比apriori类算法有了明显的性能提升。我们还发现,只要在新交易中购买的物品的比例总是比扫描整个数据库要好得多。
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