基于数据流环境的K最大支配线及E-GA算法研究

Wang Qi
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引用次数: 1

摘要

随着数据库技术的不断发展,数据库能够存储和处理的数据量越来越大。如何从海量数据中挖掘出人们感兴趣的信息是数据库研究领域的重要问题之一。本文从用户需求分析入手,对天际线的各种查询扩展问题进行了深入研究。然后,根据不同的应用场景,提出高效、有针对性的解决方案,有效满足人们的实际需求。针对数据流环境中k代表天际线查询问题,提出了一种适用于数据流环境的k代表天际线选择标准k-LDS。k- lds希望选择优势面积最大的天际线子集(仅包含k个天际线元组)作为数据流中的k个代表性天际线集。对于三维和多维k-LDS问题,本文还提出了近似算法,即GA算法。最后,通过实验证明k-LDS更适合于数据流环境,提出的算法可以有效地解决数据流环境下的k-LD问题。
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Research on K Maximum Dominant Skyline and E-GA Algorithm Based on Data Stream Environment
With the continuous development of database technology, the data volume that can be stored and processed by the database is increasing. How to dig out information that people are interested in from the massive data is one of the important issues in the field of database research. This article starts from the user demand analysis, and makes an in-depth study of various query expansion problems of skylines. Then, according to different application scenarios, this paper proposes efficient and targeted solutions to effectively meet the actual needs of people. Based on krepresentative skyline query problem in the data stream environment, a k-representative skyline selection standard k-LDS is presented which is applicable for data stream environment. k-LDS hopes to select the skyline subset with the largest dominant area (containing k skyline tuples only) as krepresentative skyline set in data stream. And for the 3-dimensionalal and multidimensional k-LDS problems, this paper also proposes the approximation algorithm, namely GA algorithm. Finally, through the experiment, it is proved that k-LDS is more suitable for the data stream environment, and the algorithm proposed can effectively solve k-LD problems under the data stream environment.
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