基于滑动窗口的传感器数据流频繁模式挖掘

M. Rashid, J. Kamruzzaman, S. Wasimi
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引用次数: 1

摘要

无线传感器网络以数据流的形式产生大量的数据;利用基于度量的传感器关联规则机制对这些流进行挖掘,可以提取出感兴趣的知识。支持基于度量的传感器关联,使用模式的出现频率作为标准,但是模式的出现频率可能不是寻找重要模式的合适标准。然而,发生行为的时间规律性可以被认为是评估模式在无线传感器网络中的重要性的另一个重要指标。在无线传感器网络中,每隔一定的时间间隔出现一种频率模式,称为规则频率传感器模式。尽管在实时应用中非常需要从传感器数据流中挖掘有规律的频繁传感器模式,但目前还没有提出这样的算法。因此,本文提出了一种新的树状结构,称为规则频繁传感器模式流树(RFSPS-tree)和一种新的技术,称为数据流的规则频繁传感器模式挖掘(RFSPMS),用于基于滑动窗口的wsn的规则频繁传感器模式挖掘。通过将数据流的有用知识捕获到RFSPMS树中,我们的RFSPMS算法可以使用类似于模式增长的频繁模式(FP)增长方法挖掘当前窗口中相关的传感器模式。大量的实验分析表明,我们的技术在传感器数据流中发现有规律的频繁传感器模式是非常有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sliding Window-based Regularly Frequent Patterns Mining Over Sensor Data Streams
WSNs generate a large amount of data in the form of data stream; and mining these streams with well used support metric-based sensor association rule mechanism can result in extracting interesting knowledge. Support metric-based sensor association use occurrence frequency of pattern as criteria, but the occurrence frequency of a pattern may not be an appropriate criterion for finding significant patterns. However, temporal regularity in occurrence behavior can be considered as another important measure for assessing the importance of patterns in WSNs. A frequent pattern that occurs after regular intervals in WSNs called as regularly frequent sensor patterns. Even though mining regularly frequent sensor patterns from sensor data stream is extremely required in real-time applications, no such algorithm has been proposed yet. Therefore, in this paper we propose a novel tree structure, called regular frequent sensor pattern stream tree (RFSPS-tree) and a new technique, called regularly frequent sensor pattern mining of data stream (RFSPMS), using sliding window-based regularly frequent sensor pattern mining for WSNs. By capturing the useful knowledge of the data stream into an RFSPS-tree, our RFSPMS algorithm can mine associated sensor patterns in the current window with frequent pattern (FP)-growth like pattern-growth method. Extensive experimental analyses show that our technique is very efficient in discovering regularly frequent sensor patterns over sensor data stream.
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