TOUCH: in-memory spatial join by hierarchical data-oriented partitioning

Sadegh Heyrani-Nobari, F. Tauheed, T. Heinis, Panagiotis Karras, S. Bressan, A. Ailamaki
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引用次数: 54

Abstract

Efficient spatial joins are pivotal for many applications and particularly important for geographical information systems or for the simulation sciences where scientists work with spatial models. Past research has primarily focused on disk-based spatial joins; efficient in-memory approaches, however, are important for two reasons: a) main memory has grown so large that many datasets fit in it and b) the in-memory join is a very time-consuming part of all disk-based spatial joins. In this paper we develop TOUCH, a novel in-memory spatial join algorithm that uses hierarchical data-oriented space partitioning, thereby keeping both its memory footprint and the number of comparisons low. Our results show that TOUCH outperforms known in-memory spatial-join algorithms as well as in-memory implementations of disk-based join approaches. In particular, it has a one order of magnitude advantage over the memory-demanding state of the art in terms of number of comparisons (i.e., pairwise object comparisons), as well as execution time, while it is two orders of magnitude faster when compared to approaches with a similar memory footprint. Furthermore, TOUCH is more scalable than competing approaches as data density grows.
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TOUCH:通过分层的面向数据的分区进行内存空间连接
高效的空间连接对于许多应用都是至关重要的,对于地理信息系统或科学家使用空间模型的模拟科学尤其重要。过去的研究主要集中在基于磁盘的空间连接;然而,高效的内存方法很重要,有两个原因:a)主内存已经变得非常大,以至于许多数据集都可以放入其中;b)内存连接是所有基于磁盘的空间连接中非常耗时的一部分。在本文中,我们开发了一种新的内存空间连接算法TOUCH,它使用分层的面向数据的空间分区,从而使其内存占用和比较次数都很低。我们的结果表明,TOUCH优于已知的内存空间连接算法以及基于磁盘的连接方法的内存实现。特别是,在比较次数(即成对对象比较)和执行时间方面,它比当前对内存要求较高的状态有一个数量级的优势,而与具有类似内存占用的方法相比,它要快两个数量级。此外,随着数据密度的增长,TOUCH比其他竞争方法更具可扩展性。
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