On multi-type reverse nearest neighbor search
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摘要
This paper presents a study of the Multi-Type Reverse Nearest Neighbor (MTRNN) query problem. Traditionally, a reverse nearest neighbor (RNN) query finds all the objects that have the query point as their nearest neighbor. In contrast, an MTRNN query finds all the objects that have the query point in their multi-type nearest neighbors. Existing RNN queries find an influence set by considering only one feature type. However, the influence from multiple feature types is often critical for strategic decision making in many business scenarios, such as site selection for a new shopping center. To that end, we first formalize the notion of the MTRNN query by considering the influence of multiple feature types. We also propose R-tree based algorithms to find the influence set for a given query point and multiple feature types. Finally, experimental results are provided to show the strength of the proposed algorithms as well as design decisions related to performance tuning.
论文关键词:Reverse nearest neighbor search,Spatial database,Location-based service
论文评审过程:Received 6 July 2010, Revised 3 May 2011, Accepted 16 June 2011, Available online 7 July 2011.
论文官网地址:https://doi.org/10.1016/j.datak.2011.06.003