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An evaluation and query algorithm for the influence of spatial location based on RkNN

机译:基于RKNN的空间位置影响的评估与查询算法

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摘要

This paper is devoted to the investigation of the evaluation and query algorithm problem for the influence of spatial location based on RkNN (reverse k nearest neighbor). On the one hand, an object can make contribution to multiple locations. However, for the existing measures for evaluating the influence of spatial location, an object only makes contribution to one location, and its influence is usually measured by the number of spatial objects in the region. In this case, a new measure for evaluating the influence of spatial location based on the RkNN is proposed. Since the weight of the contribution is determined by the distance between the object and the location, the influence weight definition is given, which meets the actual applications. On the other hand, a query algorithm for the influence of spatial location is introduced based on the proposed measure. Firstly, an algorithm named INCH (INtersec-tion's Convex Hull) is applied to get candidate regions, where all objects are candidates. Then, kNN and Range-k are used to refine results. Then, according to the proposed measure, the weights of objects in RkNN results are computed, and the influence of the location is accumulated. The experimental results on the real data show that the optimized algorithms outperform the basic algorithm on efficiency. In addition, in order to provide the best customer service in the location problem and make the best use of all infrastructures, a location algorithm with the query is presented based on RkNN. The influence of each facility is calculated in the location program and the equilibrium coefficient is used to evaluate the reasonability of the location in the paper. The smaller the equilibrium coefficient is, the more reasonability the program is. The actual application shows that the location based on influence makes the location algorithm more reasonable and available.
机译:本文致力于研究基于RKNN(反向K最近邻居的空间位置影响评价和查询算法问题。一方面,对象可以对多个位置做出贡献。然而,对于用于评估空间位置影响的现有措施,物体仅对一个位置做出贡献,并且其影响通常通过该区域中的空间物体的数量来衡量。在这种情况下,提出了一种基于RKNN评估空间位置影响的新措施。由于贡献的重量由物体与位置之间的距离决定,因此给出了影响重量定义,其符合实际应用。另一方面,基于所提出的测量来引入用于空间位置影响的查询算法。首先,应用了一个名为英寸(intersec-tion的凸船)的算法来获取候选区域,所有对象都是候选者。然后,kNN和范围-K用于改进结果。然后,根据所提出的测量,计算RKNN结果中的对象的权重,并且累积了位置的影响。实验结果对实际数据显示优化的算法优于基本效率算法。此外,为了提供最佳的客户服务在位置问题并充分利用所有基础架构,基于RKNN呈现了具有查询的位置算法。在位置程序中计算每个设施的影响,并且平衡系数用于评估纸张中的位置的合理性。平衡系数越小,程序的合理性越多。实际应用表明,基于影响的位置使得位置算法更合理和可用。

著录项

  • 来源
    《Frontiers of computer science》 |2021年第2期|152604.1-152604.9|共9页
  • 作者

    Jingke XU; Yidan ZHAO; Ge YU;

  • 作者单位

    School of Computer Science and Engineering Northeastern University Shenyang 110819 China School of Information and Control Engineering Shenyang Jianzhu University Shenyang 110168 China Liaoning Province Big Data Management and Analysis Laboratory of Urban Construction Shenyang 110168 China;

    School of Information and Control Engineering Shenyang Jianzhu University Shenyang 110168 China;

    School of Computer Science and Engineering Northeastern University Shenyang 110819 China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    spatial data; reverse k nearest neighbor; influence of spatial location; location algorithm;

    机译:空间数据;反向k最近邻居;空间位置的影响;位置算法;

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