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首页> 外文期刊>Genetic programming and evolvable machines >Multi-class pattern classification using single, multi-dimensional feature-space feature extraction evolved by multi-objective genetic programming and its application to network intrusion detection
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Multi-class pattern classification using single, multi-dimensional feature-space feature extraction evolved by multi-objective genetic programming and its application to network intrusion detection

机译:基于多目标遗传规划的单维多维特征空间特征提取的多类模式分类及其在网络入侵检测中的应用

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In this paper we investigate using multi-objective genetic programming to evolve a feature extraction stage for multiple-class classifiers. We find mappings which transform the input space into a new, multi-dimensional decision space to increase the discrimination between all classes; the number of dimensions of this decision space is optimized as part of the evolutionary process. A simple and fast multi-class classifier is then implemented in this multi-dimensional decision space. Mapping to a single decision space has significant computational advantages compared to k-class-to-2-class decompositions; a key design requirement in this work has been the ability to incorporate changing priors and/or costs associated with mislabeling without retraining. We have employed multi-objective optimization in a Pareto framework incorporating solution complexity as an independent objective to be minimized in addition to the main objective of the misclassification error. We thus give preference to simpler solutions which tend to generalize well on unseen data, in accordance with Occam's Razor. We obtain classification results on a series of benchmark problems which are essentially identical to previous, more complex decomposition approaches. Our solutions are much simpler and computationally attractive as well as able to readily incorporate changing priors/costs. In addition, we have also applied our approach to the K.DD-99 intrusion detection dataset and obtained results which are highly competitive with the KDD-99 Cup winner but with a significantly simpler classification framework.
机译:在本文中,我们研究了使用多目标遗传规划来发展多类分类器的特征提取阶段。我们发现映射将输入空间转换为新的多维决策空间,以增加所有类别之间的区别;作为进化过程的一部分,该决策空间的维数已得到优化。然后,在此多维决策空间中实现一个简单,快速的多类分类器。与k类到2类分解相比,映射到单个决策空间具有显着的计算优势。这项工作的关键设计要求是能够合并变更前的先验和/或与贴错标签相关的成本,而无需重新培训。除了误分类错误的主要目标之外,我们在Pareto框架中采用了多目标优化,将解决方案复杂性作为要最小化的独立目标。因此,根据Occam的Razor,我们倾向于更简单的解决方案,这些解决方案往往可以很好地概括未见数据。我们根据一系列基准问题获得分类结果,这些问题基本上与以前的更复杂的分解方法相同。我们的解决方案更简单,计算上更有吸引力,并且能够轻松合并变化的先验/成本。此外,我们还将我们的方法应用于K.DD-99入侵检测数据集,并获得了与KDD-99杯优胜者极具竞争力的结果,但分类框架却非常简单。

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