K-nearest neighbor skyline queries in mobile environment

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作者
机构
[1] Nie, Jing
[2] Weng, Wei
[3] Sun, Linan
来源
Nie, Jing | 1600年 / Transport and Telecommunication Institute, Lomonosova street 1, Riga, LV-1019, Latvia卷 / 18期
关键词
Basic concepts - K-nearest neighbors - Mobile environments - Mobile internet devices - Moving query - Query optimization - Skyline point - Skyline query;
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摘要
With the popularity of portable mobile Internet device, the applications based on query are increasingly enriched. This kind of skyline query problems is not only related about the positions, but also the constantly moving queries. Range-base queries are widely used to solve the problem in recent algorithm, but focusing more on computing all skyline points. However, users are interested in nearby skyline points in mobile environments. Two different algorithms are proposed and the characteristics and applied range are analyzed in the paper to solve the problem, after researching relevant properties based on the basic concept of the skyline query.
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