An efficient algorithm for mining frequent sequences by a new strategy without support counting

D. Chiu, Yi-Hung Wu, Arbee L. P. Chen
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引用次数: 90

Abstract

Mining sequential patterns in large databases is an important research topic. The main challenge of mining sequential patterns is the high processing cost due to the large amount of data. We propose a new strategy called direct sequence comparison (abbreviated as DISC), which can find frequent sequences without having to compute the support counts of nonfrequent sequences. The main difference between the DISC strategy and the previous works is the way to prune nonfrequent sequences. The previous works are based on the antimonotone property, which prune the nonfrequent sequences according to the frequent sequences with shorter lengths. On the contrary, the DISC strategy prunes the nonfrequent sequences according to the other sequences with the same length. Moreover, we summarize three strategies used in the previous works and design an efficient algorithm called DISC-all to take advantages of all the four strategies. The experimental results show that the DISC-all algorithm outperforms the PrefixSpan algorithm on mining frequent sequences in large databases. In addition, we analyze these strategies to design the dynamic version of our algorithm, which achieves a much better performance.
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一种不支持计数的新策略挖掘频繁序列的高效算法
在大型数据库中挖掘顺序模式是一个重要的研究课题。挖掘顺序模式的主要挑战是由于数据量大而导致的高处理成本。我们提出了一种新的策略,称为直接序列比较(DISC),它可以在不计算非频繁序列的支持计数的情况下找到频繁序列。DISC策略与先前工作的主要区别在于对非频繁序列的修剪方式。以往的工作都是基于反单调性,根据长度较短的频繁序列对非频繁序列进行剪枝。相反,DISC策略根据相同长度的其他序列对非频繁序列进行剪枝。此外,我们总结了之前工作中使用的三种策略,并设计了一种称为DISC-all的高效算法来利用这四种策略。实验结果表明,在大型数据库中挖掘频繁序列时,DISC-all算法优于PrefixSpan算法。此外,我们分析了这些策略,设计了算法的动态版本,实现了更好的性能。
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