Enhancing cyber threat detection with an improved artificial neural network model

Toluwase Sunday Oyinloye , Micheal Olaolu Arowolo , Rajesh Prasad
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引用次数: 0

Abstract

Identifying cyberattacks that attempt to compromise digital systems is a critical function of intrusion detection systems (IDS). Data labeling difficulties, incorrect conclusions, and vulnerability to malicious data injections are only a few drawbacks of using machine learning algorithms for cybersecurity. To overcome these obstacles, researchers have created several network IDS models, such as the Hidden Naive Bayes Multiclass Classifier and supervised/unsupervised machine learning techniques. This study provides an updated learning strategy for artificial neural network (ANN) to address data categorization problems caused by unbalanced data. Compared to traditional approaches, the augmented ANN’s 92% accuracy is a significant improvement owing to the network’s increased resilience to disturbances and computational complexity, brought about by the addition of a random weight and standard scaler. Considering the ever-evolving nature of cybersecurity threats, this study introduces a revolutionary intrusion detection method.
利用改进的人工神经网络模型加强网络威胁检测
识别试图破坏数字系统的网络攻击是入侵检测系统(IDS)的关键功能。数据标记困难、不正确的结论和容易受到恶意数据注入的攻击,这些只是使用机器学习算法进行网络安全的几个缺点。为了克服这些障碍,研究人员创建了几种网络IDS模型,如隐式朴素贝叶斯多类分类器和监督/无监督机器学习技术。本研究为人工神经网络(ANN)提供了一种新的学习策略,以解决不平衡数据引起的数据分类问题。与传统方法相比,增强人工神经网络92%的准确率是一个显着的改进,因为网络增加了对干扰的弹性和计算复杂度,这是由随机权值和标准标量带来的。考虑到网络安全威胁的不断发展,本研究引入了一种革命性的入侵检测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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