首页> 外文会议>Fuzzy Systems and Knowledge Discovery, 2009. FSKD '09 >Mining Recent Approximate Frequent Items in Wireless Sensor Networks
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Mining Recent Approximate Frequent Items in Wireless Sensor Networks

机译:在无线传感器网络中挖掘最近的近似频繁项

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Mining Frequent Items from sensory data is a major research problem in wireless sensor networks(WSNs) and it can be widely used in environmental monitoring. Conventional Lossy Counting algorithm can be applied to solve this problem in centralized manner. However, centralized algorithm brings severely data collision in WSNs, and results in inaccurate mining results. In this paper, we present D-FIMA, a distributed frequent items mining algorithm. D-FIMA, running at every sensor node, establishes items aggregation tree via forwarding mining request beforehand, and each node maintains local approximate frequent items. The root of the aggregation tree outputs the final global approximate frequent items. Theoretical analysis and the simulation results show that energy consumption of D-FIMA is much less than the centralized algorithm, and mining results of D-FIMA is more accurate than the centralized algorithm.
机译:从传感数据中挖掘频繁项是无线传感器网络(WSN)的一个主要研究问题,可广泛用于环境监测中。可以采用常规的有损计数算法来集中解决该问题。然而,集中式算法在无线传感器网络中带来了严重的数据冲突,并导致不准确的挖掘结果。在本文中,我们提出了D-FIMA,一种分布式频繁项目挖掘算法。在每个传感器节点上运行的D-FIMA通过预先转发挖掘请求来建立项目聚合树,并且每个节点维护本地的近似频繁项目。聚合树的根输出最终的全局近似频繁项。理论分析和仿真结果表明,D-FIMA的能耗远低于集中式算法,而D-FIMA的挖掘结果比集中式算法更为准确。

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