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Improved Intrusion Detection Algorithm based on TLBO and GA Algorithms

机译:基于TLBO和GA算法的改进的入侵检测算法

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Optimization algorithms are widely used for the identification of intrusion. This is attributable to the increasing number of audit data features and the decreasing performance of human-based smart Intrusion Detection Systems (IDS) regarding classification accuracy and training time. In this paper, an improved method for intrusion detection for binary classification was presented and discussed in detail. The proposed method combined the New Teaching-Learning-Based Optimization Algorithm (NTLBO), Support Vector Machine (SVM), Extreme Learning Machine (ELM), and Logistic Regression (LR) (feature selection and weighting) NTLBO algorithm with supervised machine learning techniques for Feature Subset Selection (FSS). The process of selecting the least number of features without any effect on the result accuracy in FSS was considered a multi-objective optimization problem. The NTLBO was proposed in this paper as an FSS mechanism; its algorithm-specific, parameter-less concept (which requires no parameter tuning during an optimization) was explored. The experiments were performed on the prominent intrusion machine-learning datasets (KDDCUP'99 and CICIDS 2017), where significant enhancements were observed with the suggested NTLBO algorithm as compared to the classical Teaching-Learning-Based Optimization algorithm (TLBO), NTLBO presented better results than TLBO and many existing works. The results showed that NTLBO reached 100% accuracy for KDDCUP'99 dataset and 97% for CICIDS dataset.
机译:优化算法广泛用于识别入侵。这是归因于越来越多的审计数据特征以及关于分类准确性和培训时间的基于人的智能入侵检测系统(IDS)的降低性能。本文介绍并详细讨论了对二元分类的入侵检测的改进方法。该方法组合新的教学 - 基于教学的优化算法(NTLBO),支持向量机(SVM),极端学习机(ELM)和Logistic回归(LR)(特征选择和加权)NTLBO算法,具有监督机器学习技术用于特征子集选择(FSS)。选择最小数量的特征的过程,没有任何影响FSS中的结果精度被认为是多目标优化问题。本文提出了NTLBO作为FSS机制;探索了其算法的算法,较少的参数概念(在优化期间不需要参数调整)。在突出的入侵机器学习数据集(KDDCUP'99和Cicids 2017)上进行了实验,其中与建议的NTLBO算法相比,观察到与基于经典教学的优化算法(TLBO)相比,NTLBO呈现更好结果而不是TLBO和许多现有的作品。结果表明,NTLBO为KDDCUP'99数据集达到了100%的准确性,并为Cicids数据集进行了97%。

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