Multiple k Nearest Neighbor Query Processing in Spatial Network Databases

This paper concerns the efficient processing of multiple k nearest neighbor queries in a road-network setting. The assumed setting covers a range of scenarios such as the one where a large population of mobile service users that are constrained to a road network issue nearest-neighbor queries for points of interest that are accessible via the road network. Given multiple k nearest neighbor queries, the paper proposes progressive techniques that selectively cache query results in main memory and subsequently reuse these for query processing. The paper initially proposes techniques for the case where an upper bound on k is known a priori and then extends the techniques to the case where this is not so. Based on empirical studies with real-world data, the paper offers insight into the circumstances under which the different proposed techniques can be used with advantage for multiple k nearest neighbor query processing.

[1]  Gebräuchliche Fertigarzneimittel,et al.  V , 1893, Therapielexikon Neurologie.

[2]  Hans-Peter Kriegel,et al.  A Density-Based Algorithm for Discovering Clusters in Large Spatial Databases with Noise , 1996, KDD.

[3]  Shashi Shekhar,et al.  CCAM: A Connectivity-Clustered Access Method for Networks and Network Computations , 1997, IEEE Trans. Knowl. Data Eng..

[4]  Yannis Manolopoulos,et al.  Multiple Range Query Optimization in Spatial Databases , 1998, ADBIS.

[5]  Christian S. Jensen,et al.  Computational data modeling for network-constrained moving objects , 2003, GIS '03.

[6]  Yufei Tao,et al.  Query Processing in Spatial Network Databases , 2003, VLDB.

[7]  Torben Bach Pedersen,et al.  Nearest neighbor queries in road networks , 2003, GIS '03.

[8]  Cyrus Shahabi,et al.  Voronoi-Based K Nearest Neighbor Search for Spatial Network Databases , 2004, VLDB.

[9]  Walid G. Aref,et al.  SEA-CNN: scalable processing of continuous k-nearest neighbor queries in spatio-temporal databases , 2005, 21st International Conference on Data Engineering (ICDE'05).

[10]  Ralf Hartmut Güting,et al.  Modeling and querying moving objects in networks , 2006, The VLDB Journal.

[11]  Kyriakos Mouratidis,et al.  Conceptual partitioning: an efficient method for continuous nearest neighbor monitoring , 2005, SIGMOD '05.

[12]  Chin-Wan Chung,et al.  An Efficient and Scalable Approach to CNN Queries in a Road Network , 2005, VLDB.

[13]  Christian S. Jensen,et al.  The Islands Approach to Nearest Neighbor Querying in Spatial Networks , 2005, SSTD.

[14]  Jianliang Xu,et al.  Fast Nearest Neighbor Search on Road Networks , 2006, EDBT.