Skyline查询:介绍

Eleftherios Tiakas, A. Papadopoulos, Y. Manolopoulos
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引用次数: 24

摘要

在过去的二十年中,天际线查询被用于多个多标准决策支持应用程序中。给定数据集中的支配关系,skyline查询返回不能被任何其他对象支配的对象。Skyline查询在多维空间、子空间、度量空间、动态空间、流环境和时间序列数据中得到了广泛的研究。提出了几种天际线查询处理算法,如基于窗口的、渐进式的、分布式的、基于几何的、基于索引的、分而治之的和动态规划算法。此外,还提出了几种变体来解决特定于应用程序的问题,如k主导天际线、top-k主导查询、空间天际线查询等。由于在skyline查询中返回的对象数量可能会变得很大,因此对skyline查询的基数性也有广泛的研究。这项广泛的研究描述了天际线查询的重要性及其在现代应用中的变化。
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Skyline queries: An introduction
During the two past decades, skyline queries were used in several multi-criteria decision support applications. Given a dominance relationship in a dataset, a skyline query returns the objects that cannot be dominated by any other objects. Skyline queries were studied extensively in multidimensional spaces, in subspaces, in metric spaces, in dynamic spaces, in streaming environments, and in time-series data. Several algorithms were proposed for skyline query processing, such as window-based, progressive, distributed, geometric-based, index-based, divide- and-conquer, and dynamic programming algorithms. Moreover, several variations were proposed to solve application-specific problems like k-dominant skylines, top-k dominating queries, spatial skyline queries, and others. As the number of objects that are returned in a skyline query may become large, there is also an extensive study for the cardinality of skyline queries. This extensive research depicts the importance of skyline queries and their variations in modern applications.
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