过渡模式及其重要里程碑

Qian Wan, Aijun An
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引用次数: 12

摘要

在数据挖掘研究中,频繁模式的挖掘是一个被广泛研究的问题。然而,大多数现有的频繁模式挖掘算法没有考虑与事务相关的时间戳。在本文中,我们扩展了现有的频繁模式挖掘框架,以考虑每个事务的时间戳,并发现频率随时间急剧变化的模式。我们定义了一种新的模式类型,称为过渡模式,用于捕获事务数据库中频繁模式的动态行为。过渡模式包括积极过渡模式和消极过渡模式。它们的频率在事务数据库的某些时间点急剧增加/减少。我们为过渡模式引入了重要里程碑的概念,这是模式频率变化最显著的时间点。此外,我们开发了一种算法,从事务数据库中挖掘过渡模式集及其重要里程碑。我们对现实世界数据库的实验研究表明,挖掘积极和消极的过渡模式是一种非常有前途的实用方法,可以从大型数据库中发现新颖和有趣的知识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transitional Patterns and Their Significant Milestones
Mining frequent patterns in transaction databases has been studied extensively in data mining research. However, most of the existing frequent pattern mining algorithms do not consider the time stamps associated with the transactions. In this paper, we extend the existing frequent pattern mining framework to take into account the time stamp of each transaction and discover patterns whose frequency dramatically changes over time. We define a new type of patterns, called transitional patterns, to capture the dynamic behavior of frequent patterns in a transaction database. Transitional patterns include both positive and negative transitional patterns. Their frequencies increase/decrease dramatically at some time points of a transaction database. We introduce the concept of significant milestones for a transitional pattern, which are time points at which the frequency of the pattern changes most significantly. Moreover, we develop an algorithm to mine from a transaction database the set of transitional patterns along with their significant milestones. Our experimental studies on real-world databases illustrate that mining positive and negative transitional patterns is highly promising as a practical and useful approach to discovering novel and interesting knowledge from large databases.
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