Algorithm selection framework for cyber attack detection

Marc Chalé, Nathaniel D. Bastian, J. Weir
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引用次数: 5

Abstract

The number of cyber threats against both wired and wireless computer systems and other components of the Internet of Things continues to increase annually. In this work, an algorithm selection framework is employed on the NSL-KDD data set and a novel paradigm of machine learning taxonomy is presented. The framework uses a combination of user input and meta-features to select the best algorithm to detect cyber attacks on a network. Performance is compared between a rule-of-thumb strategy and a meta-learning strategy. The framework removes the conjecture of the common trial-and-error algorithm selection method. The framework recommends five algorithms from the taxonomy. Both strategies recommend a high-performing algorithm, though not the best performing. The work demonstrates the close connectedness between algorithm selection and the taxonomy for which it is premised.
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网络攻击检测算法选择框架
针对有线和无线计算机系统以及物联网其他组件的网络威胁数量每年都在持续增加。在这项工作中,在NSL-KDD数据集上采用了一种算法选择框架,并提出了一种新的机器学习分类范式。该框架结合使用用户输入和元特征来选择最佳算法来检测网络上的网络攻击。将经验法则策略和元学习策略的性能进行比较。该框架消除了常见的试错算法选择方法的猜想。该框架从分类法中推荐了五种算法。这两种策略都推荐了一种高性能的算法,尽管不是最好的。这项工作证明了算法选择和分类法之间的密切联系,它是前提。
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