Spatial Query Estimation without the Local Uniformity Assumption |
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Authors: | Yufei Tao Christos Faloutsos Dimitris Papadias |
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Affiliation: | (1) Department of Computer Science and Engineering, Chinese University of Hong Kong, Sha Tin, New Territories, Hong Kong;(2) Department of Computer Science, Carnegie Mellon University, Forbes Avenue, Pittsburgh, PA, USA;(3) Department of Computer Science, Hong Kong University of Science and Technology, Clear Water Bay, Kowloon, Hong Kong |
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Abstract: | Existing estimation approaches for spatial databases often rely on the assumption that data distribution in a small region is uniform, which seldom holds in practice. Moreover, their applicability is limited to specific estimation tasks under certain distance metric. This paper develops the Power-method, a comprehensive technique applicable to a wide range of query optimization problems under both L∞ and L2 metrics. The Power-method eliminates the local uniformity assumption and is, therefore, accurate even for datasets where existing approaches fail. Furthermore, it performs estimation by evaluating only one simple formula with minimal computational overhead. Extensive experiments confirm that the Power-method outperforms previous techniques in terms of accuracy and applicability to various optimization scenarios. |
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Keywords: | databases selectivity estimation range queries nearest neighbor |
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