WSpan:大型序列数据库的加权序列模式挖掘

Unil Yun, J. Leggett
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引用次数: 84

摘要

序列模式挖掘算法用于挖掘序列数据库中满足最小支持约束的频繁子序列集。然而,以往的顺序挖掘算法对顺序模式的处理是统一的,而顺序模式的重要性是不同的。大多数序列挖掘算法的另一个主要问题是,当最小支持度降低时,它们仍然会生成指数级的大量序列模式,并且除了增加最小支持度之外,它们没有提供其他方法来调整序列模式的数量。本文提出了一种加权顺序模式挖掘算法WSpan。我们的主要方法是将权重约束推入顺序模式增长方法,同时保持向下关闭属性。定义了一个权重范围以保持向下闭合属性,并在权重范围内为项目赋予不同的权重。在扫描序列数据库时,利用序列数据库中的最大权值对加权后的不频繁序列模式进行修剪,在挖掘步骤中,利用投影序列数据库的最大权值。通过这样做,可以保持向下闭合特性。WSpan通过调整权重范围,在大型数据库中生成较少但重要的加权顺序模式,特别是具有低最小支持的密集数据库
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WSpan: Weighted Sequential pattern mining in large sequence databases
Sequential pattern mining algorithms have been developed which mine the set of frequent subsequences satisfying a minimum support constraint in a sequence database. However, previous sequential mining algorithms treat sequential patterns uniformly while sequential patterns have different importance. Another main problem in most of the sequence mining algorithms is that they still generate an exponentially large number of sequential patterns when a minimum support is lowered and they do not provide alternative ways to adjust the number of sequential patterns other than increasing the minimum support. In this paper, we propose a weighted sequential pattern mining algorithm called WSpan. Our main approach is to push the weight constraints into the sequential pattern growth approach while maintaining the downward closure property. A weight range is defined to maintain the downward closure property and items are given different weights within the weight range. In scanning a sequence database, a maximum weight in the sequence database is used to prune weighted infrequent sequential patterns and in the mining step, maximum weights of projected sequence databases are used. By doing so, the downward closure property can be maintained. WSpan generates fewer but important weighted sequential patterns in large databases, particularly dense databases with a low minimum support, by adjusting a weight range
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