Interrelated dynamic biased feature selection and classification model using enhanced gorilla troops optimizer for intrusion detection

IF 6.8 2区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY alexandria engineering journal Pub Date : 2025-02-01 Epub Date: 2024-12-03 DOI:10.1016/j.aej.2024.10.100
Appalaraju Grandhi, Sunil Kumar Singh
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Abstract

An Intrusion Detection System (IDS) is a valuable tool for network security since it can identify attacks, intrusions, and other types of illegal access. Excessive and irrelevant data slows down the classification process and eventually weakens the system's capacity to make informed decisions when IDS is monitoring a huge volume of network traffic. Innovative approaches are utilized to create large amounts of data and a lot of network traffic in order to test its effectiveness. A vital step in machine learning is feature selection. By determining which features are most essential for describing the dataset and its initial attributes, feature selection seeks to improve intrusion prediction performance while simultaneously delving deeper into the stored data. Making a feature selection is similar to fixing an optimization problem without a clear definition when users don't know where to begin. Finding the fewest characteristics required to describe the dataset, the original features, and to conduct classification is the primary purpose of feature selection, which also aims to improve prediction performance and acquire a deeper understanding of the stored data. As a result, researchers have been focusing on feature-selection issues recently, especially in light of the massive growth in available databases. Metaheuristic algorithms using a learning model have been the subject of studies to optimize feature selection difficulties. This research uses Enhanced Gorilla Troops Optimizer (EGTO), for enhancing the feature selection process and then performing classification. This research presents a Interrelated Dynamic Biased Feature Selection Model using Enhanced Gorilla Troops Optimizer (IDBFS-EGTO) for generation of feature vector set for intrusion detection. Despite its apparent success in handling a wide range of practical problems, it risks getting mired in local optima and premature convergence when faced with more difficult optimization challenges that is overcome with EGTO. The EGTO approach, which uses a collection of operators to strike a more steady equilibrium between exploitation and exploration. The proposed model generates relevant feature subset for machine learning model for accurate detection and classification of intrusions in the network. The proposed model achieved 98.4 % accuracy in intrusion detection and 98.6 % accuracy in EGTO optimization classification. The proposed model is improved by 3.8 % in feature weight allocation accuracy and 1.2 % in detection accuracy levels. The proposed model is compared with the traditional models and the results represent that the proposed model performance is high.
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基于增强型大猩猩部队优化器的入侵检测相关动态偏置特征选择与分类模型
入侵检测系统(IDS)是网络安全的重要工具,因为它可以识别攻击、入侵和其他类型的非法访问。当IDS监控大量网络流量时,过多和不相关的数据会减慢分类过程,并最终削弱系统做出明智决策的能力。创新的方法被用来创建大量的数据和大量的网络流量,以测试其有效性。机器学习的一个重要步骤是特征选择。通过确定哪些特征对描述数据集及其初始属性最重要,特征选择旨在提高入侵预测性能,同时更深入地研究存储的数据。进行功能选择就像在用户不知道从哪里开始的情况下修复一个没有明确定义的优化问题。寻找描述数据集所需的最少特征,原始特征,并进行分类是特征选择的主要目的,也是为了提高预测性能,获得对存储数据更深入的理解。因此,研究人员最近一直关注特征选择问题,特别是考虑到可用数据库的大量增长。使用学习模型的元启发式算法一直是优化特征选择困难的研究主题。本研究使用增强型大猩猩部队优化器(EGTO)来增强特征选择过程,然后进行分类。提出了一种基于增强型大猩猩部队优化器(IDBFS-EGTO)的相互关联动态偏置特征选择模型,用于入侵检测特征向量集的生成。尽管EGTO在处理广泛的实际问题方面取得了明显的成功,但当面对更困难的优化挑战时,它有陷入局部最优和过早收敛的风险,而EGTO可以克服这些挑战。EGTO方法,利用一系列作业者在开采和勘探之间达到更稳定的平衡。该模型为机器学习模型生成相关的特征子集,用于对网络中的入侵进行准确的检测和分类。该模型的入侵检测准确率为98.4% %,EGTO优化分类准确率为98.6% %。该模型的特征权重分配精度提高了3.8 %,检测精度提高了1.2 %。将所提模型与传统模型进行了比较,结果表明所提模型具有较高的性能。
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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来源期刊
alexandria engineering journal
alexandria engineering journal Engineering-General Engineering
CiteScore
11.20
自引率
4.40%
发文量
1015
审稿时长
43 days
期刊介绍: Alexandria Engineering Journal is an international journal devoted to publishing high quality papers in the field of engineering and applied science. Alexandria Engineering Journal is cited in the Engineering Information Services (EIS) and the Chemical Abstracts (CA). The papers published in Alexandria Engineering Journal are grouped into five sections, according to the following classification: • Mechanical, Production, Marine and Textile Engineering • Electrical Engineering, Computer Science and Nuclear Engineering • Civil and Architecture Engineering • Chemical Engineering and Applied Sciences • Environmental Engineering
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