Speeding Up Reachability Queries in Public Transport Networks Using Graph Partitioning

被引:0
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作者
Bezaye Tesfaye
Nikolaus Augsten
Mateusz Pawlik
Michael H. Böhlen
Christian S. Jensen
机构
[1] University of Salzburg,
[2] University of Zurich,undefined
[3] Aalborg University,undefined
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关键词
Reachability queries; Public transport networks; Temporal graphs; Spatial network databases;
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学科分类号
摘要
Computing path queries such as the shortest path in public transport networks is challenging because the path costs between nodes change over time. A reachability query from a node at a given start time on such a network retrieves all points of interest (POIs) that are reachable within a given cost budget. Reachability queries are essential building blocks in many applications, for example, group recommendations, ranking spatial queries, or geomarketing. We propose an efficient solution for reachability queries in public transport networks. Currently, there are two options to solve reachability queries. (1) Execute a modified version of Dijkstra’s algorithm that supports time-dependent edge traversal costs; this solution is slow since it must expand edge by edge and does not use an index. (2) Issue a separate path query for each single POI, i.e., a single reachability query requires answering many path queries. None of these solutions scales to large networks with many POIs. We propose a novel and lightweight reachability index. The key idea is to partition the network into cells. Then, in contrast to other approaches, we expand the network cell by cell. Empirical evaluations on synthetic and real-world networks confirm the efficiency and the effectiveness of our index-based reachability query solution.
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页码:11 / 29
页数:18
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