基于自动参数优化和并行处理的大数据汇总异常点检测

Zhaoyu Shou, Simin Li
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引用次数: 0

摘要

作为数据分析和数据挖掘中最重要的研究问题之一,大数据集的离群点检测近年来受到了很多研究的关注。在本文中,我们研究了一个有趣的研究问题,即汇总大型数据集以支持高效的局部离群点检测。为了总结大型数据集,提出了一种高效的总结算法,该算法可以产生原始数据集的高度紧凑的摘要,该摘要可以用于从未来的类似数据集中检测局部异常值。提出了一种新的自动参数优化方法,对摘要算法中使用的关键参数进行最优设置。并行处理方法也被提出,以显著加快总结过程。实验结果表明,本文提出的算法对于大数据集具有高度可扩展性,并且能够有效地生成用于局部离群点检测的数据集摘要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large dataset summarization with automatic parameter optimization and parallel processing for outlier detection
As one of the most important research problems of data analytics and data mining, outlier detection from large datasets has drawn many research attentions in recent years. In this paper, we investigate the interesting research problem of summarizing large datasets for supporting efficient local outlier detection. To summarize large datasets, efficient summarization algorithms are proposed which produce a highly compact summary of the original dataset which can be applied to detect local outliers from future similar datasets. A novel automatic parameter optimization method is proposed to produce the optimal setup of the key parameters used in the summarization algorithm. Parallel processing methods are also proposed to accelerate significantly the summarization process. The experimental evaluation results demonstrate that our proposed algorithms are highly scalable for large datasets and effective in producing dataset summary for local outlier detection.
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