Continuous Skyline Query Processing Algorithm Based on Sharding Technology Under Sliding Window Model

Xiufeng Xia, T. Yu, Rui Zhu, Jiajia Li, Xiangyu Liu, Chuanyu Zong
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Abstract

Continuous query processing over sliding window is an important problem in stream data management. Given the sliding window W and the continuous query q, q monitors to the multidimensional data objects in the window. When the window slides, q returns all the skyline objects in the window. Many scholars have carried out researches on such problems. The core idea is to delete objects that cannot be query results by using the temporal sequence relationship between objects in the window, and when the window slides, the algorithm can find the query results from the rest. However, the algorithm is sensitive to data timing relationships such as problems. In the worst case, the size of the candidate object equals to the size of the data in the window. In this paper, we propose a partition-based framework to support continuous skyline query over sliding window. It partitions the window into a group of sub-window, and maintain the skyline objects in each sub-window. In this way, it could effectively overcome the impact the object arrived order to the algorithm performance. In addition, we propose a self-adaptive algorithm to partition the window according to the distribution of streaming data. A large number of experiments prove the effectiveness and high efficiency of the proposed algorithm.
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滑动窗口模型下基于分片技术的连续Skyline查询处理算法
滑动窗口上的连续查询处理是流数据管理中的一个重要问题。给定滑动窗口W和连续查询q, q监视窗口中的多维数据对象。当窗口滑动时,q返回窗口中的所有天际线对象。许多学者对这些问题进行了研究。其核心思想是利用窗口中对象之间的时间序列关系,删除不能成为查询结果的对象,当窗口滑动时,算法可以从剩余的对象中找到查询结果。但该算法对数据时序关系等问题比较敏感。在最坏的情况下,候选对象的大小等于窗口中数据的大小。在本文中,我们提出了一个基于分区的框架来支持滑动窗口上的连续天际线查询。它将窗口划分为一组子窗口,并维护每个子窗口中的天际线对象。这样可以有效地克服目标到达顺序对算法性能的影响。此外,我们还提出了一种自适应算法,根据流数据的分布对窗口进行划分。大量实验证明了该算法的有效性和高效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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