异常检测的数据分析方法:演变和建议

Iman I. M. Abu Sulayman, Abdelkader H. Ouda
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引用次数: 5

摘要

基于大数据的应用越来越多,特别是那些利用异常检测技术的应用。本文对适合大数据应用的异常检测技术提出了新的见解。本研究有新颖的分类和基于实践的实施支持。本文提出了三种与大数据特征相一致的异常检测技术分类,这些技术由支持向量机和神经网络等机器学习技术的几种应用提供支持。这有助于评估和推荐异常检测中的最佳实践,因此提供了新的实现。
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Data Analytics Methods for Anomaly Detection: Evolution and Recommendations
Big Data-based applications have been increased especially those which utilize anomaly detection techniques. This paper puts a new insight into the anomaly detection techniques, suitable for Big Data applications. This study is supported by novel classifications and practical based implementation. Three classifications are proposed for anomaly detection techniques that are aligned with Big Data characteristics and powered by several applications of the machine learning techniques, such as Support Vector Machine and neural network. This has helped to evaluate and recommend for the best practices in anomaly detection and hence a new implementation has been provided.
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