Mining High Utility Sequential Patterns in Dynamic Databases

J. Wu, Fengyang Li, Ranran Li, Shuo Liu, Huiying Zhou
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Abstract

High-utility sequential pattern mining(HUSPM) has become a popular problem in the field of data mining. Many algorithms have been designed for mining high-utility sequential patterns(HUSPs), but most of the sets deal with static databases. In dynamic database mining, whenever new data comes in, the entire database needs to be rescanned to update the acquired information, thus taking up a lot of time and resources in the process of maintaining and updating the discovered information. In order to solve this problem, in this paper, we propose an incremental mining algorithm called Pre-HUSPM, based on the concept of pre-large for inserting new sequences in dynamic databases to maintain the discovered high-utility sequential patterns.
动态数据库中高效序列模式的挖掘
高效序列模式挖掘(HUSPM)已成为数据挖掘领域的一个热门问题。已经设计了许多算法来挖掘高实用顺序模式(husp),但大多数算法集处理静态数据库。在动态数据库挖掘中,每当有新数据进入时,需要对整个数据库进行重新扫描以更新所获取的信息,从而在维护和更新发现的信息的过程中占用大量的时间和资源。为了解决这一问题,本文提出了一种基于pre-large概念的增量挖掘算法Pre-HUSPM,用于在动态数据库中插入新的序列,以维护发现的高效用序列模式。
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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