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Classification Analysis of Intrusion Detection on NSL-KDD Using Machine Learning Algorithms

机译:使用机器学习算法对NSL-KDD的入侵检测分类分析

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Since three decades, artificial intelligence has been evolved in order to outperform the tasks that human beings are not capable. These tasks can be any problem from our lives and one of these problems is computer networks-related tasks which huge number of privacy data is transferred even a second. Within last two decades, machine learning techniques with capabilities for prediction, optimisation, and as well as classification are developed for using to solve the real-life problems. In this paper, challenging and popular NSL-KDD dataset for intrusion detection is chosen for performed experiments, where classification and three benchmark machine learning techniques are used in order to determine optimum technique for classification domain. Experiments are performed by implementing 3-layered Back-propagation Neural Network, Support Vector Machine and Decision 'Tree. 'Thirty percent (30%) of instances of NSL-KDD Dataset were considered that causes 25193 of total instances in experiments. Each experiment is repeated for two times by using 60% and 70% of instances for training and the rest for testing. Increment of training patterns or instances caused little fluctuations on accuracy rates in Decision Tree and Back-propagation but it causes more effect in Support Vector Machine which is about 1% decrement in accuracy rate. It is seen from the performed experiments' results that, increment or degradation of training ratio of instances in dataset does not affect the performance of the techniques directly.
机译:自三十年来以来,人工智能已经发展,以优于人类没有能力的任务。这些任务可能是我们生活中的任何问题,其中一个问题是计算机网络相关的任务,其中大量的隐私数据甚至一秒传输。在过去二十年中,开发了具有预测,优化和分类的能力的机器学习技术,以解决现实生活问题。在本文中,选择用于入侵检测的具有挑战性和流行的NSL-KDD数据集,用于执行实验,其中使用分类和三种基准机学习技术来确定分类域的最佳技术。通过实施3层背部传播神经网络,支持向量机和决定“树进行实验。认为'NSL-KDD数据集的35%(30%)的实例被认为是在实验中导致总实例的25193。通过使用60%和70%的培训实例重复每个实验两次,用于训练和其余用于测试。培训模式或实例的增量引起了决策树和背部传播中的精度速率的波动,但它对支持向量机引起更多效果,精度率约为1%。从所执行的实验结果中可以看出,数据集中实例的培训比的增量或降低不会影响技术的性能。

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