空间数据库的高索引压缩

Hung-Yi Lin, Shih-Ying Chen
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引用次数: 6

摘要

kdb树是检索多维数据的传统点访问方法。许多文献经常将存储利用率低和检索性能不足作为KDB-tree族结构的两个瓶颈。数据插入顺序和数据偏度导致的大量不必要的分割是造成这两个瓶颈的致命原因。压缩kdb树对于实际应用仍然具有很高的吸引力。本文提出了动态调优分区(DT-partition)和叶子复制(l-replication)方法来解决数据插入顺序和数据偏度的问题。在不损失数据选择性的前提下,提出了一种更好的动态索引方案,使数据尽可能多地容纳到叶节点上。此外,还仔细研究和解决了在严重倾斜空间中检索性能的下降问题。分析和实验结果表明,该方法优于传统的索引方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High Indexing Compression for Spatial Databases
The KDB-tree is a traditional point access method for retrieving multidimensional data. Many literatures frequently address the low storage utilization and insufficient retrieval performance as two bottlenecks for KDB-tree family of structures. A large amount of unnecessary splits caused by data insertion orders and data skewness is the fatal reason for these two bottlenecks. Compressing KDB-trees still has high appeal for practical applications. In this paper, dynamic-tuning partition (DT-partition) and leaf replication(l-replication) methods are proposed to mend the sufferings of data insertion orders and data skewness. Without loss the quantity of data selectivity, a better dynamic indexing scheme is presented for accommodating data to leaf nodes as many as possible. Moreover, the degradation of retrieval performance in heavily skewed spaces are carefully investigated and solved. Analytical and experimental results show our indexing method out performs the traditional methods.
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