结构化P2P网络中高效和渐进的天际线计算

Lijiang Chen, B. Cui, Hua Lu, Linhao Xu, Quanqing Xu
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引用次数: 46

摘要

在基于点的数据管理中,一个有趣的问题是对多属性空间中skyline查询的有效支持。skyline查询从一组多维数据点中检索感兴趣点的子集,与之相比,没有其他点更好。Skyline查询在多准则决策和用户偏好应用中起着重要作用。本文研究了结构化P2P网络中的天际线计算问题。我们利用iMinMax(theta)变换将高维数据点映射到一维值。然后,所有转换后的数据点都分布在一个名为BATON的结构化P2P网络上,在这个网络中,所有的对等点实际上都被组织成一个平衡的二叉搜索树。在此基础上,提出了一种计算分布式P2P网络天际线的渐进算法。此外,我们还提出了一种自适应天际线滤波技术,以降低分布式天际线计算过程中的处理成本和通信成本。我们对合成数据集和真实数据集的性能研究表明,该方法可以显著减少传输数据量并获得快速响应时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
iSky: Efficient and Progressive Skyline Computing in a Structured P2P Network
An interesting problem in peer-based data management is efficient support for skyline queries within a multiattribute space. A skyline query retrieves from a set of multidimensional data points a subset of interesting points, compared to which no other points are better. Skyline queries play an important role in multi-criteria decision making and user preference applications. In this paper, we address the skyline computing problem in a structured P2P network. We exploit the iMinMax(thetas) transformation to map high-dimensional data points to 1-dimensional values. All transformed data points are then distributed on a structured P2P network called BATON, where all peers are virtually organized as a balanced binary search tree. Subsequently, a progressive algorithm is proposed to compute skyline in the distributed P2P network. Further, we propose an adaptive skyline filtering technique to reduce both processing cost and communication cost during distributed skyline computing. Our performance study, with both synthetic and real datasets, shows that the proposed approach can dramatically reduce transferred data volume and gain quick response time.
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