Developing Big Data anomaly dynamic and static detection algorithms: AnomalyDSD spark package

IF 8.1 1区 计算机科学 0 COMPUTER SCIENCE, INFORMATION SYSTEMS
Diego García-Gil , David López , Daniel Argüelles-Martino , Jacinto Carrasco , Ignacio Aguilera-Martos , Julián Luengo , Francisco Herrera
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引用次数: 0

Abstract

Background

Anomaly detection is the process of identifying observations that differ greatly from the majority of data. Unsupervised anomaly detection aims to find outliers in data that is not labeled, therefore, the anomalous instances are unknown. The exponential data generation has led to the era of Big Data. This scenario brings new challenges to classic anomaly detection problems due to the massive and unsupervised accumulation of data. Traditional methods are not able to cop up with computing and time requirements of Big Data problems.

Methods

In this paper, we propose four distributed algorithm designs for Big Data anomaly detection problems: HBOS_BD, LODA_BD, LSCP_BD, and XGBOD_BD. They have been designed following the MapReduce distributed methodology in order to be capable of handling Big Data problems.

Results

These algorithms have been integrated into an Spark Package, focused on static and dynamic Big Data anomaly detection tasks, namely AnomalyDSD. Experiments using a real-world case of study have shown the performance and validity of the proposals for Big Data problems.

Conclusions

With this proposal, we have enabled the practitioner to efficiently and effectively detect anomalies in Big Data datasets, where the early detection of an anomaly can lead to a proper and timely decision.
开发大数据异常动态和静态检测算法:AnomalyDSD 火花软件包
背景异常检测是识别与大多数数据差异很大的观察结果的过程。无监督异常检测的目的是在没有标记的数据中发现异常值,因此异常实例是未知的。指数级的数据生成导致了大数据时代的到来。由于数据的海量和无监督积累,这种情况给传统的异常检测问题带来了新的挑战。本文针对大数据异常检测问题提出了四种分布式算法设计:本文针对大数据异常检测问题提出了四种分布式算法设计:HBOS_BD、LODA_BD、LSCP_BD 和 XGBOD_BD。这些算法已被集成到 Spark 软件包中,该软件包专注于静态和动态大数据异常检测任务,即 AnomalyDSD。通过使用真实世界的研究案例进行实验,证明了这些建议在大数据问题上的性能和有效性。结论通过这项建议,我们使从业人员能够高效地检测大数据数据集中的异常情况,其中异常情况的早期检测可导致正确和及时的决策。
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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来源期刊
Information Sciences
Information Sciences 工程技术-计算机:信息系统
CiteScore
14.00
自引率
17.30%
发文量
1322
审稿时长
10.4 months
期刊介绍: Informatics and Computer Science Intelligent Systems Applications is an esteemed international journal that focuses on publishing original and creative research findings in the field of information sciences. We also feature a limited number of timely tutorial and surveying contributions. Our journal aims to cater to a diverse audience, including researchers, developers, managers, strategic planners, graduate students, and anyone interested in staying up-to-date with cutting-edge research in information science, knowledge engineering, and intelligent systems. While readers are expected to share a common interest in information science, they come from varying backgrounds such as engineering, mathematics, statistics, physics, computer science, cell biology, molecular biology, management science, cognitive science, neurobiology, behavioral sciences, and biochemistry.
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