Frequent Items Computation over Uncertain Wireless Sensor Network

Shuang Wang, Guoren Wang, Xiaoxing Gao, Zhenhua Tan
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引用次数: 2

Abstract

There is an increasing interest in uncertain and probabilistics databases arising in application domains such as sensor networks, information retrieval, mobile object data management, information extraction, and data integration. A range of different approaches have been proposed to find the frequent items in uncertain database. But there is little work on processing such query in distributed, in-network inference, such as sensor network. In sensor network, communication is the primary problem because of limited batteries. In this paper, a synopsis with minimum amount tuples is proposed, which sufficient for answering the top-k query. And this synopsis can be dynamic maintained with new tuples been added. A novel communication efficient algorithm is presented in taking advantage of this synopsis. The test results confirm the effectiveness and efficiency of our approaches.
不确定无线传感器网络中的频繁项计算
在传感器网络、信息检索、移动对象数据管理、信息提取和数据集成等应用领域,对不确定和概率数据库的兴趣日益浓厚。提出了一系列不同的方法来寻找不确定数据库中的频繁项。但是在分布式、网络内推理(如传感器网络)中,对此类查询的处理工作很少。在传感器网络中,由于电池有限,通信是主要问题。本文提出了一种具有最小数量元组的概要,它足以回答top-k查询。并且可以在添加新元组时动态维护该概要。利用这一特点,提出了一种新的高效通信算法。实验结果证实了该方法的有效性和高效性。
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