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Cyber Attack Detection Model (CADM) Based on Machine Learning Approach

机译:基于机器学习方法的网络攻击检测模型(CADM)

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A reliable Cyber Attack Detection Model (CADM) is a system that works as safeguard for the users of modern technological devices and assistant for the operators of networks. The research paper aims to develop a CADM for analyzing the network data patterns to classify cyber-attacks. CADM finds out attack wise detection accuracy using ensemble classification method. LASSO has been used to extract important features. It can work with large datasets and it has more visualization capability. Gradient Boosting and Random Forest algorithms have been used for classification of network traffic data to build an ensemble method. Gradient Boosting algorithm trains weak learning models and select the best decision trees to deliver more improved prediction accuracy and Random Forest algorithm trains each tree in parallel manner. In this research work, five datasets such as NSL-KDD, KDD Cup 99, UNSWNB15, URL 2016 and CICIDS 2017 are also applied to check the efficiency of the proposed model.
机译:可靠的网络攻击检测模型(CADM)是一种适用于现代技术设备用户的保障措施和网络运营商的助手。研究文件旨在开发一个CADM,用于分析网络数据模式来分类网络攻击。 CADM使用集合分类方法发现攻击明智的检测精度。套索已被用于提取重要功能。它可以使用大型数据集,它具有更多可视化功能。梯度升压和随机森林算法已被用于网络流量数据的分类以构建集合方法。梯度升压算法列车弱学习模型,选择最佳决策树,以提供更高的预测精度和随机森林算法以并行方式列举每棵树。在本研究工作中,还应用了五个数据集,例如NSL-KDD,KDD杯99,UNSWNB15,URL 2016和Cicids 2017,以检查所提出的模型的效率。

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