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Clustering spatial networks for aggregate query processing: A hypergraph approach

机译:聚类空间网络以进行聚合查询处理:一种超图方法

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In spatial networks, clustering adjacent data to disk pages is highly likely to reduce the number of disk page accesses made by the aggregate network operations during query processing. For this purpose, different techniques based on the clustering graph model are proposed in the literature. In this work, we show that the state-of-the-art clustering graph model is not able to correctly capture the disk access costs of aggregate network operations. Moreover, we propose a novel clustering hypergraph model that correctly captures the disk access costs of these operations. The proposed model aims to minimize the total number of disk page accesses in aggregate network operations. Based on this model, we further propose two adaptive recursive bipartitioning schemes to reduce the number of allocated disk pages while trying to minimize the number of disk page accesses. We evaluate our clustering hypergraph model and recursive bipartitioning schemes on a wide range of road network datasets. The results of the conducted experiments show that the proposed model is quite effective in reducing the number of disk accesses incurred by the network operations.
机译:在空间网络中,将相邻数据群集到磁盘页面很可能会减少在查询处理期间由聚合网络操作进行的磁盘页面访问次数。为此,文献中提出了基于聚类图模型的不同技术。在这项工作中,我们证明了最新的集群图模型不能正确地捕获聚合网络操作的磁盘访问成本。此外,我们提出了一种新颖的群集超图模型,该模型可以正确捕获这些操作的磁盘访问成本。提出的模型旨在最小化聚合网络操作中磁盘页面访问的总数。基于此模型,我们进一步提出了两种自适应递归双向划分方案,以减少分配的磁盘页面数,同时尝试最小化磁盘页面访问数。我们在广泛的道路网络数据集上评估聚类超图模型和递归分割方案。进行的实验结果表明,该模型在减少网络操作引起的磁盘访问次数方面非常有效。

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