首页> 外文期刊>Neural processing letters >Training a Neural Network for Cyberattack Classification Applications Using Hybridization of an Artificial Bee Colony and Monarch Butterfly Optimization
【24h】

Training a Neural Network for Cyberattack Classification Applications Using Hybridization of an Artificial Bee Colony and Monarch Butterfly Optimization

机译:使用人工蜂群杂交和帝王蝶优化来训练网络攻击分类的神经网络

获取原文
获取原文并翻译 | 示例
       

摘要

Arguably the most recurring issue concerning network security is building an approach that is capable of detecting intrusions into network systems. This issue has been addressed in numerous works using various approaches, of which the most popular one is to consider intrusions as anomalies with respect to the normal traffic in the network and classify network packets as either normal or abnormal. Improving the accuracy and efficiency of this classification is still an open problem to be solved. The study carried out in this article is based on a new approach for intrusion detection that is mainly implemented using the Hybrid Artificial Bee Colony algorithm (ABC) and Monarch Butterfly optimization (MBO). This approach is implemented for preparing an artificial neural system (ANN) in order to increase the precision degree of classification for malicious and non-malicious traffic in systems. The suggestion taken into consideration was to place side-by-side nine other metaheuristic algorithms that are used to evaluate the proposed approach alongside the related works. In the beginning the system is prepared in such a way that it selects the suitable biases and weights utilizing a hybrid (ABC) and (MBO). Subsequently the artificial neural network is retrained by using the information gained from the ideal weights and biases which are obtained from the hybrid algorithm (HAM) to get the intrusion detection approach able to identify new attacks. Three types of intrusion detection evaluation datasets namely KDD Cup 99, ISCX 2012, and UNSW-NB15 were used to compare and evaluate the proposed technique against the other algorithms. The experiment clearly demonstrated that the proposed technique provided significant enhancement compared to the other nine classification algorithms, and that it is more efficient with regards to network intrusion detection.
机译:可以说,与网络安全有关的最经常出现的问题是建立一种能够检测到入侵网络系统的方法。在使用各种方法的众多工作中已经解决了这个问题,其中最流行的方法是将入侵视为相对于网络中正常流量的异常,并将网络数据包分类为正常还是异常。提高这种分类的准确性和效率仍然是一个有待解决的开放问题。本文进行的研究基于一种新的入侵检测方法,该方法主要使用混合人工蜂群算法(ABC)和君主蝴蝶优化(MBO)来实现。实现此方法是为了准备人工神经系统(ANN),以提高系统中恶意和非恶意流量的分类精确度。考虑到的建议是将9种其他启发式算法并排放置,这些算法用于评估与相关工作一起提出的方法。开始时,系统的准备方式是使用混合(ABC)和(MBO)选择合适的偏差和权重。随后,通过使用从理想权重和偏差(从混合算法(HAM)获得)中获得的信息来对人工神经网络进行再训练,从而获得能够识别新攻击的入侵检测方法。三种类型的入侵检测评估数据集,即KDD Cup 99,ISCX 2012和UNSW-NB15,被用来与其他算法进行比较和评估。实验清楚地表明,与其他九种分类算法相比,该技术提供了显着的增强,并且在网络入侵检测方面更有效。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号