大数据中数据流异常检测指南

Annie Ibrahim Rana, G. Estrada, Marc Solé, Victor Muntés
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引用次数: 8

摘要

数据流中的实时数据分析是大数据中一个极具挑战性的领域。最近,大数据技术的激增引起了人们对数据流中重大变化或异常检测的极大兴趣。与异常检测相关的许多领域都有各种各样的文献。来自看似不相关的领域的越来越多的技术妨碍了全面的审查。因此,许多有趣的技术可能在很大程度上仍然不为异常检测社区所知。该调查提出了一个紧凑的,但全面的概述了各种策略的异常检测在不断发展的数据流。本文提供了许多基于性能和对用例的适用性的建议。我们期望我们的分类和建议将为这个快速发展的领域的从业者提供有用的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly Detection Guidelines for Data Streams in Big Data
Real time data analysis in data streams is a highly challenging area in big data. The surge in big data techniques has recently attracted considerable interest to the detection of significant changes or anomalies in data streams. There is a variety of literature across a number of fields relevant to anomaly detection. The growing number of techniques, from seemingly disconnected areas, prevents a comprehensive review. Many interesting techniques may therefore remain largely unknown to the anomaly detection community at large. The survey presents a compact, but comprehensive overview of diverse strategies for anomaly detection in evolving data streams. A number of recommendations based performance and applicability to use cases are provided. We expect that our classification and recommendations will provide useful guidelines to practitioners in this rapidly evolving field.
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