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A novel algorithm for mining behavioral patterns from wireless sensor networks

机译:一种从无线传感器网络挖掘行为模式的新算法

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Due to recent advances in wireless sensor networks (WSNs) and their ability to generate huge amount of data in the form of streams, knowledge discovery techniques have received a great deal of attention to extract useful knowledge regarding the underlying network. Traditionally sensor association rules measure occurrence frequency of patterns. However, these rules often generate a huge number of rules, most of which are non-informative or fail to reflect the true correlation among data objects. In this paper, we propose a new type of sensor behavioral pattern called associated sensor patterns that captures association-like co-occurrences and the strong temporal correlations implied by such co-occurrences in the sensor data. We also propose a novel tree structure called as associated sensor pattern tree (ASPT) and a mining algorithm, associated sensor pattern (ASP) which facilitates frequent pattern (FP) growth-based technique to generate all associated sensor patterns from WSN data with only one scan over the sensor database. Extensive performance study shows that our algorithm is very efficient in finding associated sensor patterns than the existing significant algorithms.
机译:由于无线传感器网络(WSNS)的最新进步及其以流的形式产生大量数据的能力,知识发现技术已经接受了提取关于底层网络的有用知识的大量注意力。传统上传感器关联规则测量模式的发生频率。但是,这些规则通常会产生大量规则,其中大部分是非信息性的,或者未能反映数据对象之间的真实相关性。在本文中,我们提出了一种新型的传感器行为模式,称为相关传感器模式,该传感器图案捕获相同的共同发生以及传感器数据中这种共同发生的强烈的时间相关性。我们还提出了一种称为相关传感器模式树(ALPT)的新型树结构,以及挖掘算法,相关的传感器模式(ASP),其促进了频繁的模式(FP)基于生长的技术,以仅用一个生成来自WSN数据的所有相关传感器模式扫描传感器数据库。广泛的性能研究表明,我们的算法在找到与现有的重要算法的相关传感器模式非常有效。

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