多维空间中计算top-k对的统一方法

M. A. Cheema, Xuemin Lin, Haixun Wang, Jianmin Wang, W. Zhang
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引用次数: 15

摘要

Top-k对查询有许多实际应用。K个最近对查询,K个最远对查询和它们的双色变体是top-k对查询的一些例子,这些查询根据距离函数对对进行排序。虽然这些问题已经得到了大量的研究关注,但目前还没有一个统一的方法可以有效地回答所有这些问题。此外,没有现有的工作支持基于通用评分函数的top-k对查询。在本文中,我们提出了一种统一的方法,支持广泛的top-k对查询,包括上面提到的查询。我们提出的方法允许用户为查询中涉及的每个属性定义一个本地评分函数和一个全局评分函数,该函数通过组合其在不同属性上的分数来计算每对的最终分数。我们提出了高效的内部和外部存储算法,我们的理论分析表明,当涉及两个或更少的属性时,算法的预期性能是最优的。我们的方法不需要任何预先构建的索引,易于实现并且内存需求低。我们进行了大量的实验来证明我们提出的方法的有效性。
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A unified approach for computing top-k pairs in multidimensional space
Top-k pairs queries have many real applications. k closest pairs queries, k furthest pairs queries and their bichromatic variants are some of the examples of the top-k pairs queries that rank the pairs on distance functions. While these queries have received significant research attention, there does not exist a unified approach that can efficiently answer all these queries. Moreover, there is no existing work that supports top-k pairs queries based on generic scoring functions. In this paper, we present a unified approach that supports a broad class of top-k pairs queries including the queries mentioned above. Our proposed approach allows the users to define a local scoring function for each attribute involved in the query and a global scoring function that computes the final score of each pair by combining its scores on different attributes. We propose efficient internal and external memory algorithms and our theoretical analysis shows that the expected performance of the algorithms is optimal when two or less attributes are involved. Our approach does not require any pre-built indexes, is easy to implement and has low memory requirement. We conduct extensive experiments to demonstrate the efficiency of our proposed approach.
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