改进的基于模糊空间间隔的序列模式挖掘:技术解决方案

Harsha Nair, E. A. Neeba
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引用次数: 0

摘要

数据挖掘的一个子领域包括顺序模式挖掘。该挖掘算法是对序列数据库进行挖掘后,发现重复模式。它们用于查找数据中不同项目之间的关系,用于不同的目的。由于这些数据随着时间的变化而不断变化,因此需要对增量或更新的数据库进行挖掘,以获得频繁的顺序模式。本文提出的算法采用了改进的序列模式挖掘算法,引入了模糊空间区间的概念。该算法采用类似先验的方法挖掘序列数据库中频繁出现的序列模式。利用模糊理论挖掘频繁出现序列之间的空间间隔。首先找到顺序出现的候选模式。然后是频繁出现的顺序模式,通过计算最小模糊支持度以及模糊数的使用来找到。通过模糊支持计算找到每个空间簇。最终结果包括频繁出现的基于模糊空间序列的模式。最后,实验结果也证实了MISPFSI算法的优越性。
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Improved fuzzy space-intervals based sequential pattern mining: Technical solution
One of the sub areas of the data mining includes sequential pattern mining. This mining algorithm is to find the repeating patterns after mining the sequence databases. These are used to find the relation between the various items in the data for different purposes. As these data keep changing according to the change in time, mining should be done on incremented or updated database to obtain the frequent sequential patterns. The proposed algorithm in this paper uses modified algorithm of sequential pattern mining including concepts of fuzzy space intervals. In this algorithm, frequently occurring sequential patterns in the sequence database are mined using apriori like method. Fuzzy theory is used for mining the space interval between the frequently occurring sequences. The sequentially occurring candidate patterns are found first. After that follows the frequently occurring sequential patterns, which are found by calculating the minimum fuzzy support along with the use of the fuzzy number. Each space cluster is found by fuzzy support computation. The final results comprises the frequently occurring fuzzy space sequentially based patterns. At last the outcome also confirms the excellence of the suggested MISPFSI algorithm.
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