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Distance Join Queries of Multiple Inputs in Spatial Databases

机译:空间数据库中多个输入的距离联接查询

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Let a tuple of n objects obeying a query graph (QG) be called the n-tuple. The "D_(distance)-value" of this n-tuple is the value of a linear function of distances of the n objects that make up this n-tuple, according to the edges of the QG. This paper addresses the problem of finding the K n-tuples between n spatial datasets that have the smallest Distance-values, the so-called K-Multi-Way Distance Join Query (K-MWDJQ), where each set is indexed by an R-tree-based structure. This query can be viewed as an extension of K-Closest-Pairs Query (K-CPQ) for n inputs. In addition, a recursive non-incremental branch-and-bound algorithm following a Depth-First search for processing synchronously all inputs without producing any intermediate result is proposed. Enhanced pruning techniques are also applied to the n R-trees nodes in order to reduce the total response time of the query, and a global LRU buffer is used to reduce the number of disk accesses. Finally, an experimental study of the proposed algorithm using real spatial datasets is presented.
机译:将遵循查询图(QG)的n个对象的元组称为n元组。根据QG的边缘,该n元组的“ D_(距离)值”是组成该n元组的n个对象的距离的线性函数值。本文解决了在距离值最小的n个空间数据集之间找到K个n元组的问题,即所谓的K-Multi-Way Distance Join Query(K-MWDJQ),其中每个集合都由R索引。 -基于树的结构。该查询可以视为n个输入的K-最近对查询(K-CPQ)的扩展。此外,提出了一种深度优先搜索之后的递归非增量分支定界算法,用于同步处理所有输入而不会产生任何中间结果。增强的修剪技术也应用于n个R-tree节点,以减少查询的总响应时间,并且使用全局LRU缓冲区来减少磁盘访问的次数。最后,提出了使用实际空间数据集对所提出算法进行实验的研究。

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