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Efficiently Computing Weighted Proximity Relationships in Spatial Databases

机译:在空间数据库中高效地计算加权邻近关系

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Spatial data mining recently emerges from a number of real applications, such as real-estate marketing, urban planning, weather forecasting, medical image analysis, road traffic accident analysis, etc. It demands for efficient solutions for many new, expensive, and complicated problems. In this paper, we investigate the problem of evaluating the top k distinguished "features" for a "cluster" based on weighted proximity relationships between the cluster and features. We measure proximity in an average fashion to address possible nonuniform data distribution in a cluster. Combining a standard multi-step paradigm with new lower and upper proximity bounds, we presented an efficient algorithm to solve the problem. The algorithm is implemented in several different modes. Our experiment results not only give a comparison among them but also illustrate the efficiency of the algorithm.
机译:最近,空间数据挖掘来自于许多实际应用,例如房地产营销,城市规划,天气预报,医学图像分析,道路交通事故分析等。它需要针对许多新的,昂贵的和复杂的问题的有效解决方案。在本文中,我们研究了基于聚类和要素之间的加权邻近关系评估“集群”的前k个显着“要素”的问题。我们以平均方式测量邻近度,以解决集群中可能的不均匀数据分布。将标准的多步范式与新的上下接近范围相结合,我们提出了一种有效的算法来解决该问题。该算法以几种不同的模式实现。我们的实验结果不仅给出了它们之间的比较,而且还说明了该算法的效率。

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