协同空间计算的地理社会K-Cover组查询

Yafei Li, Rui Chen, Jianliang Xu, Qiao Huang, Haibo Hu, Byron Choi
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引用次数: 24

摘要

本文研究了一种新的地理社会k -覆盖组(GSKCG)查询,给定一组查询点和一个社交网络,检索一个最小用户组,其中每个用户与至少k个其他用户有社会关系,并且用户所关联的区域(如熟悉区域或服务区域)可以共同覆盖所有查询点。尽管GSKCG具有实用性,但它的查询问题是np困难的。因此,我们探索了一组有效的修剪策略,以推导出寻找最优解的有效算法。此外,我们还针对问题设计了一种新的索引结构,以进一步加快查询处理速度。大量的实验表明,我们的算法在实际数据集上取得了理想的性能。
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Geo-Social K-Cover Group queries for collaborative spatial computing
In this paper, we study a new type of Geo-Social K-Cover Group (GSKCG) queries that, given a set of query points and a social network, retrieves a minimum user group in which each user is socially related to at least k other users and the users' associated regions (e.g., familiar regions or service regions) can jointly cover all the query points. Albeit its practical usefulness, the GSKCG query problem is NP-hard. We consequently explore a set of effective pruning strategies to derive an efficient algorithm for finding the optimal solution. Moreover, we design a novel index structure tailored to our problem to further accelerate query processing. Extensive experiments demonstrate that our algorithm achieves desirable performance on real-life datasets.
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