A Novel Approach for Mining Similarity Profiled Temporal Association Patterns Using Venn Diagrams

V. Radhakrishna, Puligadda Veereswara Kumar, V. Janaki
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引用次数: 61

Abstract

The problem of mining frequent patterns in a static database is studied extensively in the literature by many researchers. Conventional frequent pattern algorithms are not applicable to find frequent patterns from the temporal database. Temporal database is a database which can store past, present and future information. A temporal relation may be viewed as a database of time invariant and time variant relation instances. The objective of this research is to come up with a novel approach so as to find the temporal association patterns similar to a given reference support sequence and user defined threshold using the concept of Venn diagrams. The proposed approach scans the temporal database only once to find the temporal association patterns and hence reduces the huge overhead incurred when the database is scanned multiple times.
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一种利用维恩图挖掘相似时序关联模式的新方法
在静态数据库中挖掘频繁模式的问题被许多研究者广泛地研究。传统的频繁模式算法不适用于从时态数据库中发现频繁模式。时态数据库是一种能够存储过去、现在和未来信息的数据库。时间关系可以看作时不变和时变关系实例的数据库。本研究的目的是利用维恩图的概念,提出一种新的方法来寻找与给定的参考支持序列和用户自定义阈值相似的时间关联模式。该方法只需扫描一次时态数据库即可找到时态关联模式,从而减少了多次扫描数据库时产生的巨大开销。
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