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Probabilistic nearest neighbor queries of uncertain data via wireless data broadcast - Springer

机译:通过无线数据广播的概率不确定数据的最近邻查询-Springer

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摘要

Most existing location-dependent query processing methods are based on the client-server model. However, due to the increasing nubmer of smart mobile devices, there can be a large volume of data being processed on the server side and the server can be system performance bottleneck. This paper takes the first step towards processing probabilistic nearest neighbor queries of uncertain data objects via wireless data broadcast (BPNN). Our method leverages the key properties of Voronoi Diagrams for Uncertain Data (UV-Diagram). To preserve the good properties of UV-Diagram, according to the property of Hilbert curve, UV-Hilbert-Partition is proposed to partition the UV-Diagram into several grid cells, called Hilbert-Cells, which have good locality-preserving behavior. Then a special organizing method is proposed. For a certain UV-Diagram, the CellFrame structure, which can be located based on the coordinates of a query client, is used to efficiently minimize the broadcast cycle and keep the probabilistic nearest neighbor results. Based on the sequence of the CellFrames, a distributed index, called UVHilbert-DI, is proposed to support BPNN query processing. Finally, the efficient BPNN algorithms based on UVHilbert-DI is presented and extensive experiments have been conducted to demonstrate the performance of our approaches.
机译:大多数现有的与位置相关的查询处理方法都是基于客户端-服务器模型的。但是,由于智能移动设备的普及,服务器端可能会处理大量数据,并且服务器可能成为系统性能的瓶颈。本文迈出了通过无线数据广播(BPNN)处理不确定数据对象的概率最近邻查询的第一步。我们的方法利用了不确定数据的Voronoi图的关键属性(UV-Diagram)。为了保持UV-Diagram的良好性能,根据Hilbert曲线的性质,提出了UV-Hilbert-Partition将UV-Diagram划分为几个具有良好局部性的网格单元,称为Hilbert-Cells。然后提出了一种特殊的组织方法。对于某个UV图,可以基于查询客户端的坐标进行定位的CellFrame结构用于有效地最小化广播周期并保持概率最近的邻居结果。基于CellFrames的序列,提出了一种分布式索引UVHilbert-DI,以支持BPNN查询处理。最后,提出了基于UVHilbert-DI的高效BPNN算法,并进行了广泛的实验以证明我们的方法的性能。

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