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k-dominant skyline queries on incomplete data

机译:不完整数据的k主导天际线查询

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摘要

The skyline query has been extensively explored as one of popular techniques to filter uninteresting data objects, which plays an important role in many real-life applications such as multi-criteria decision making and personalized services. This query has also been incorporated into commercial database systems for supporting preference queries. However, a skyline query may retrieve too many objects to analyze intensively especially for high dimensional datasets. As a result, k-dominant skyline query has been introduced to control the number of the objects retrieved. Existing algorithms for k-dominant skyline queries only aim at complete data, which is not well-suited for incomplete data, even though incomplete data is pervasive in scientific research and real life, due to delivery failure, no power of battery, accidental loss, etc. In this paper, we systematically study the problem of k-dominant skyline queries on incomplete data (IkDS), where the data objects might miss their attribute values. We formalize the IkDS query and then present three efficient algorithms for finding k-dominant skyline objects over incomplete data. Several novel concepts/techniques are utilized including local skyline, dominance ability, and bitmap index on incomplete data to shrink the search space. In addition, we extend our techniques to tackle two interesting variants, i.e., weighted dominant skyline query and top-delta dominant skyline query, over incomplete data. Extensive experiments using both real and synthetic data sets demonstrate the performance of our proposed algorithms. (C) 2016 Elsevier Inc. All rights reserved.
机译:天际线查询已被广泛研究为过滤不感兴趣的数据对象的流行技术之一,它在许多实际应用中(例如多标准决策和个性化服务)起着重要作用。此查询也已合并到商业数据库系统中,以支持首选项查询。但是,天际线查询可能会检索到太多对象,无法进行深入分析,尤其是对于高维数据集。结果,引入了k占主导地位的天际线查询来控制所检索对象的数量。现有的以k为主导的天际线查询算法仅针对完整数据,尽管由于交付失败,电池电量不足,意外丢失,在本文中,我们系统地研究了对不完整数据(IkDS)的k主导天际线查询的问题,其中数据对象可能会丢失其属性值。我们对IkDS查询进行形式化,然后提出三种有效算法,用于在不完整数据上查找k占主导地位的天际线对象。利用了一些新颖的概念/技术,包括局部天际线,支配能力和对不完整数据的位图索引以缩小搜索空间。此外,我们扩展了技术,以针对不完整的数据处理两个有趣的变体,即加权主导天际线查询和顶部-三角洲主导天际线查询。使用真实和合成数据集进行的大量实验证明了我们提出的算法的性能。 (C)2016 Elsevier Inc.保留所有权利。

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