一种数据流频繁项集挖掘方法

Bok-Il Seo, Jae-In Kim, Bu-Hyun Hwang
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引用次数: 2

摘要

数据挖掘被广泛应用于许多领域的知识发现。虽然发现关联规则的方法很多,但大多数都是基于频率的方法。因此,它不适合流环境。因为流环境具有连续生成事件数据的属性。存储所有数据的成本很高。本文提出了一种基于流环境的关联规则发现方法。我们的新方法是使用一个变量窗口来提取数据项。可变窗口根据同一目标事件的间隔具有不同的大小。我们的方法使用COBJ(Count object)计算方法提取数据。FPMDSTN(使用终端节点的数据流频繁模式挖掘)从提取的数据项中发现关联规则。通过实验证明,该方法比传统方法更有效地应用于流环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Method for Frequent Itemsets Mining from Data Stream
Data Mining is widely used to discover knowledge in many fields. Although there are many methods to discover association rule, most of them are based on frequency-based approaches. Therefore it is not appropriate for stream environment. Because the stream environment has a property that event data are generated continuously. it is expensive to store all data. In this paper, we propose a new method to discover association rules based on stream environment. Our new method is using a variable window for extracting data items. Variable windows have variable size according to the gap of same target event. Our method extracts data using COBJ(Count object) calculation method. FPMDSTN(Frequent pattern Mining over Data Stream using Terminal Node) discovers association rules from the extracted data items. Through experiment, our method is more efficient to apply stream environment than conventional methods.
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