SLBRIN:基于BRIN的空间学习索引

Lijun Wang, Linshu Hu, Chenhua Fu, Yuhan Yu, Peng Tang, Feng Zhang, Ren-yi Liu
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引用次数: 0

摘要

空间学习索引通过学习空间分布来构建空间索引,具有比空间索引更低的存储和查询成本。目前空间学习索引的更新策略只能解决有限的更新问题,从而降低了查询性能。提出了一种基于块范围索引(Block Range index,简称SLBRIN)的空间学习索引结构。其核心思想是历史范围和当前范围的协同,同时满足快速的空间查询和高效的索引更新。SLBRIN将更新事务分解为三个并行操作,并基于空间分布的时间接近性对其进行优化。SLBRIN还提供了具有空间学习索引和空间位置码的空间查询策略,包括点查询、范围查询和kNN查询。在合成数据集和真实数据集上的实验表明,SLBRIN在存储和查询成本上明显优于传统的空间索引和最先进的空间学习索引。此外,在模拟实时更新场景中,SLBRIN在满足高效更新的同时具有更快、更稳定的查询性能。
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SLBRIN: A Spatial Learned Index Based on BRIN
The spatial learned index constructs a spatial index by learning the spatial distribution, which performs a lower cost of storage and query than the spatial indices. The current update strategies of spatial learned indices can only solve limited updates at the cost of query performance. We propose a novel spatial learned index structure based on a Block Range Index (SLBRIN for short). Its core idea is to cooperate history range and current range to satisfy a fast spatial query and efficient index update simultaneously. SLBRIN deconstructs the update transaction into three parallel operations and optimizes them based on the temporal proximity of spatial distribution. SLBRIN also provides the spatial query strategy with the spatial learned index and spatial location code, including point query, range query and kNN query. Experiments on synthetic and real datasets demonstrate that SLBRIN clearly outperforms traditional spatial indices and state-of-the-art spatial learned indices in the cost of storage and query. Moreover, in the simulated real-time update scenario, SLBRIN has the faster and more stable query performance while satisfying efficient updates.
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