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An Efficient Incremental Mining Algorithm for Discovering Sequential Pattern in Wireless Sensor Network Environments

机译:在无线传感器网络环境中发现顺序模式的高效增量挖掘算法

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摘要

Wireless sensor networks (WSNs) are an important type of network for sensing the environment and collecting information. It can be deployed in almost every type of environment in the real world, providing a reliable and low-cost solution for management. Huge amounts of data are produced from WSNs all the time, and it is significant to process and analyze data effectively to support intelligent decision and management. However, the new characteristics of sensor data, such as rapid growth and frequent updates, bring new challenges to the mining algorithms, especially given the time constraints for intelligent decision-making. In this work, an efficient incremental mining algorithm for discovering sequential pattern (novel incremental algorithm, NIA) is proposed, in order to enhance the efficiency of the whole mining process. First, a reasoned proof is given to demonstrate how to update the frequent sequences incrementally, and the mining space is greatly narrowed based on the proof. Second, an improvement is made on PrefixSpan, which is a classic sequential pattern mining algorithm with a high-complexity recursive process. The improved algorithm, named PrefixSpan+, utilizes a mapping structure to extend the prefixes to sequential patterns, making the mining step more efficient. Third, a fast support number-counting algorithm is presented to choose frequent sequences from the potential frequent sequences. A reticular tree is constructed to store all the potential frequent sequences according to subordinate relations between them, and then the support degree can be efficiently calculated without scanning the original database repeatedly. NIA is compared with various kinds of mining algorithms via intensive experiments on the real monitoring datasets, benchmarking datasets and synthetic datasets from aspects including time cost, sensitivity of factors, and space cost. The results show that NIA performs better than the existed methods.
机译:无线传感器网络(WSN)是传感环境和收集信息的重要网络类型。它可以部署在现实世界中几乎所有类型的环境中,从而为管理提供了可靠且低成本的解决方案。 WSN始终会产生大量数据,有效地处理和分析数据对于支持智能决策和管理具有重要意义。但是,传感器数据的新特性(例如快速增长和频繁更新)给挖掘算法带来了新的挑战,特别是考虑到智能决策的时间限制。在这项工作中,为了提高整个挖掘过程的效率,提出了一种用于发现顺序模式的有效增量挖掘算法(新颖增量算法,NIA)。首先,给出了合理的证明,以说明如何逐步更新频繁序列,并且基于该证明大大缩小了挖掘空间。其次,对PrefixSpan进行了改进,PrefixSpan是具有高复杂度递归过程的经典顺序模式挖掘算法。名为PrefixSpan +的改进算法利用映射结构将前缀扩展为顺序模式,从而使挖掘步骤更加有效。第三,提出了一种快速支持数字计数算法,以从潜在的频繁序列中选择频繁序列。构造一个网状树来存储它们之间的从属关系,以存储所有潜在的频繁序列,然后可以有效地计算支持度,而无需重复扫描原始数据库。通过对真实监测数据集,基准数据集和合成数据集的密集实验,从时间成本,因素敏感性和空间成本等方面对NIA与各种挖掘算法进行了比较。结果表明,NIA的性能优于现有方法。

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