Please use this identifier to cite or link to this item: https://doi.org/10.1145/2484838.2484866
Title: Nearest group queries
Authors: Zhang, D. 
Chan, C.-Y. 
Tan, K.-L. 
Keywords: Hilbert r-tree
Kng join
Kng query
Publish/subscribe system
Issue Date: 2013
Citation: Zhang, D.,Chan, C.-Y.,Tan, K.-L. (2013). Nearest group queries. ACM International Conference Proceeding Series : -. ScholarBank@NUS Repository. https://doi.org/10.1145/2484838.2484866
Abstract: k nearest neighbor (kNN) search is an important problem in a vast number of applications, including clustering, pattern recognition, image retrieval and recommendation systems. It finds k elements from a data source D that are closest to a given query point q in a metric space. In this paper, we extend kNN query to retrieve closest elements from multiple data sources. This new type of query is named k nearest group (kNG) query, which finds k groups of elements that are closest to q with each group containing one object from each data source. kNG query is useful in many location based services. To efficiently process kNG queries, we propose a baseline algorithm using R-tree as well as an improved version using Hilbert R-tree. We also study a variant of kNG query, named kNG Join, which is analagous to kNN Join. Given a set of query points Q, kNG Join returns k nearest groups for each point in Q. Such a query is useful in publish/subscribe systems to find matching items for a collection of subscribers. A comprehensive performance study was conducted on both synthetic and real datasets and the experimental results show that Hilbert R-tree achieves significantly better performance than R-tree in answering both kNG query and kNG Join. Copyright © 2013 ACM.
Source Title: ACM International Conference Proceeding Series
URI: http://scholarbank.nus.edu.sg/handle/10635/78252
ISBN: 9781450319218
DOI: 10.1145/2484838.2484866
Appears in Collections:Staff Publications

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