Research on Pruning Techniques of Mining Weighted Sequential Patterns

He Jiang, Xiangling Ning, Qingqing Xie, Huijuan Li
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引用次数: 3

Abstract

The research of sequential patterns mining is very hot, and a variety of classical sequential patterns mining algorithms have emerged, and some data mining tools have been developed for free study and use. There are very few references in this new field, and the time and space cost of mining are large. This paper presents a new pruning technique. In this paper, we introduce minimum support and the k-weighted expectation pruning strategies in the weighted negative sequential patterns mining algorithm. The data set used in this paper is provided free of charge by UCI's official website, using the improved k-WNGSP mining algorithm and the existing WNGSP algorithm. Under the same condition, it is found that the number of negative sequences that can be excavated by the k-WNGSP algorithm. We can say that the number of the sequences is increased and the time consumed is shorter. Experiments show that the algorithm is effective and obtains the ideal experimental results.
加权序列模式挖掘的剪枝技术研究
序列模式挖掘的研究非常热门,出现了各种经典的序列模式挖掘算法,并开发了一些数据挖掘工具供自由学习和使用。这一新兴领域的文献很少,开采的时间和空间成本也很大。本文提出了一种新的剪枝技术。本文在加权负序模式挖掘算法中引入了最小支持度和k加权期望修剪策略。本文使用的数据集由UCI官网免费提供,采用改进的k-WNGSP挖掘算法和现有的WNGSP算法。在相同的条件下,发现k-WNGSP算法可以挖掘出的负序列的数量。我们可以说,序列的数量增加了,消耗的时间缩短了。实验表明,该算法是有效的,并获得了理想的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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