一种用于实时商业智能分析的实时频繁模式挖掘算法

Rajanish Dass, A. Mahanti
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引用次数: 9

摘要

在数据挖掘任务(如关联规则挖掘)中,从数据库中查找频繁模式是最耗时的过程。频繁的实时模式挖掘在许多业务应用程序(如电子商务、推荐系统、供应链管理和组决策支持系统等)中发挥着越来越重要的作用。迄今为止,已经提出了大量高效的算法,其中垂直挖掘算法被发现非常有效,通常优于水平挖掘算法。然而,对于密集的数据集,这些算法的性能会显著下降。此外,这些算法不适合响应实时需求。本文描述了一种利用差分集和有限计算资源进行实时频繁模式挖掘的算法BDFS(b)- diffi -sets。实验结果表明,我们的算法可以对可能的频繁模式做出公平的估计,并且比现有算法更快地达到一些最长的频繁模式。
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An Efficient Algorithm for Real-Time Frequent Pattern Mining for Real-Time Business Intelligence Analytics
Finding frequent patterns from databases has been the most time consuming process in data mining tasks, like association rule mining. Frequent pattern mining in real-time is of increasing thrust in many business applications such as e-commerce, recommender systems, and supply-chain management and group decision support systems, to name a few. A plethora of efficient algorithms have been proposed till date, among which, vertical mining algorithms have been found to be very effective, usually outperforming the horizontal ones. However, with dense datasets, the performances of these algorithms significantly degrade. Moreover, these algorithms are not suited to respond to the real-time need. In this paper, we describe BDFS(b)-diff-sets, an algorithm to perform real-time frequent pattern mining using diff-sets and limited computing resources. Empirical evaluations show that our algorithm can make a fair estimation of the probable frequent patterns and reaches some of the longest frequent patterns much faster than the existing algorithms.
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