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High Resolution SOM Approach to Improving Anomaly Detection in Intrusion Detection Systems

机译:高分辨率SOM改善入侵检测系统异常检测的方法

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Machine learning in general and artificial neural networks in particular are commonly used to address the problem of detecting anomalies in intrusion detection systems. Self-Organizing Maps (SOMs) have been shown to be a promising tool for this purpose, but the limitation of the cardinality of their display space has resulted in SOMs being a black box method and impeded the design of a simpler network architecture. High resolution SOMs are a very recent development that can overcome these problems. This paper explores how high resolution SOMs can help with anomaly detection in intrusion detection systems. Experiments on a large and well established benchmark problem show that high resolution SOMs improve results while allowing a simple network architecture. It is also shown that high resolution SOMs allow the development of better understanding of the results and the problem domain.
机译:特别地,通常用于解决检测入侵检测系统中的异常的问题的机器学习和人工神经网络。为此目的被证明了自组织地图(SOM)是一个有希望的工具,但它们的显示空间的基数的限制导致SOM是黑盒方法,并阻碍了更简单的网络架构的设计。高分辨率SOM是最近的发展,可以克服这些问题。本文探讨了高分辨率SOM在入侵检测系统中有多大程度的检测。关于大型良好的基准问题的实验表明,高分辨率SOM在允许简单的网络架构的同时提高结果。还表明,高分辨率SOM可以允许开发更好地了解结果和问题域。

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