Machine Learning Applications for Anomaly Detection

T. Wahyono, Y. Heryadi
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引用次数: 3

Abstract

The aim of this chapter is to describe and analyze the application of machine learning for anomaly detection. The study regarding the anomaly detection is a very important thing. The various phenomena often occur related to the anomaly study, such as the occurrence of an extreme climate change, the intrusion detection for the network security, the fraud detection for e-banking, the diagnosis for engines fault, the spacecraft anomaly detection, the vessel track, and the airline safety. This chapter is an attempt to provide a structured and a broad overview of extensive research on anomaly detection techniques spanning multiple research areas and application domains. Quantitative analysis meta-approach is used to see the development of the research concerned with those matters. The learning is done on the method side, the techniques utilized, the application development, the technology utilized, and the research trend, which is developed.
异常检测中的机器学习应用
本章的目的是描述和分析机器学习在异常检测中的应用。关于异常检测的研究是一件非常重要的事情。异常研究中经常出现的各种现象,如极端气候变化的发生、网络安全的入侵检测、电子银行的欺诈检测、发动机故障诊断、航天器异常检测、船舶航迹、航空安全等。本章试图对跨越多个研究领域和应用领域的异常检测技术的广泛研究提供结构化和广泛的概述。采用定量分析的元方法来观察与这些问题有关的研究进展。学习是在方法方面完成的,使用的技术,应用开发,使用的技术,以及研究趋势,这是发展。
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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