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Hilbert Index-based Outlier Detection Algorithm in Metric Space

机译:度量空间中基于希尔伯特指数的离群值检测算法

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摘要

Big data is profoundly changing the lifestyles of people around the world in an unprecedented way. Driven by the requirements of applications across many industries, research on big data has been growing. Methods to manage and analyze big data to extract valuable information are the key of big data research. Starting from the variety challenge of big data, this dissertation proposes a universal big data management and analysis framework based on metric space. In this framework, the Hilbert Index-based Outlier Detection (HIOD) algorithm is proposed. HIOD can handle all datatypes that can be abstracted to metric space and achieve higher detection speed. Experimental results indicate that HIOD can effectively overcome the variety challenge of big data and achieves a 2.02 speed up over iORCA on average and, in certain cases, up to 5.57. The distance calculation times are reduced by 47.57% on average and up to 89.10%.
机译:大数据正在以前所未有的方式深刻改变着世界各地人们的生活方式。受许多行业应用程序需求的驱动,对大数据的研究一直在增长。管理和分析大数据以提取有价值的信息的方法是大数据研究的关键。从大数据的多样性挑战出发,本文提出了一种基于度量空间的通用大数据管理与分析框架。在此框架下,提出了基于希尔伯特指数的离群值检测算法。 HIOD可以处理可以抽象到度量空间的所有数据类型,并可以实现更高的检测速度。实验结果表明,HIOD可以有效克服大数据的多样性挑战,平均速度比iORCA快2.02,在某些情况下可以达到5.57。距离计算时间平均减少了47.57%,最高减少了89.10%。

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