大型动态道路网络上的高吞吐量最短距离查询处理

Xinjie Zhou, Mengxuan Zhang, Lei Li, Xiaofang Zhou
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引用次数: 0

摘要

最短路径(SP)计算是许多基于位置的服务的基础,实现高吞吐量的 SP 查询处理是这些服务实时响应的基本目标。然而,在大规模动态道路网络中提交的大量查询仍对这一目标构成挑战。因此,在这项工作中,我们提出了一种新的框架,旨在利用分区最短路径(PSP)索引,在大型动态道路网络中以高吞吐量处理 SP 查询。具体来说,我们首先提出了一种跨边界策略来加速 PSP 索引的查询处理,并通过发现 PSP 索引查询效率的诅咒来分析其效率上限。之后,我们提出了一种非复杂的分区多级集线器标签(PartitionedMulti-stage Hub Labeling,PMHL),利用多种 PSP 策略和线程并行化来实现查询效率的连续提高和索引的快速维护。最后,为了进一步提高查询吞吐量,我们设计了基于树分解的图分区,并提出了后分区多级集线器标签(Post-partitionedMulti-stage Hub Labeling,PostMHL),其查询处理和索引更新速度比 PMHL 更快。在真实道路网络上进行的实验表明,我们的方法在查询吞吐量方面优于最先进的基线方法,最多可提高 1-4 个数量级。
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High Throughput Shortest Distance Query Processing on Large Dynamic Road Networks
Shortest path (SP) computation is the building block for many location-based services, and achieving high throughput SP query processing is an essential goal for the real-time response of those services. However, the large number of queries submitted in large-scale dynamic road networks still poses challenges to this goal. Therefore, in this work, we propose a novel framework aiming to process SP queries with high throughput in large and dynamic road networks, by leveraging the Partitioned Shortest Path (PSP) index. Specifically, we first put forward a cross-boundary strategy to accelerate the query processing of PSP index and analyze its efficiency upper-bound by discovering the curse of PSP index query efficiency. After that, we propose a non-trivial Partitioned Multi-stage Hub Labeling (PMHL) that utilizes multiple PSP strategies and thread parallelization to achieve consecutive query efficiency improvement and fast index maintenance. Finally, to further increase query throughput, we design tree decomposition-based graph partitioning and propose Post-partitioned Multi-stage Hub Labeling (PostMHL) with faster query processing and index update than PMHL. Experiments on real-world road networks show that our methods outperform state-of-the-art baselines in query throughput, yielding up to 1-4 orders of magnitude improvement.
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