梯度增强、随机森林和深度神经网络在入侵检测系统中的比较分析

Q4 Engineering
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引用次数: 0

摘要

针对企业信息系统的高级安全攻击威胁日益增加,因此需要新的安全解决方案来及时识别和响应这些问题。这些安全策略必须在企业设置中自动检测和响应威胁,使组织能够充分应对新出现的威胁、持续的攻击和迫在眉睫的风险。由于识别新威胁的能力有限,依赖基于规则的入侵检测系统方法的传统安全策略在实现这些目标方面效率低下。因此,已经提出了机器学习策略来满足这些需求,为新威胁提供智能检测环境。分类算法,如随机森林、梯度增强和深度学习技术,如深度神经网络,已经在各种研究中提出。本文考察了这些模型的性能,提供了基于精度、召回率、准确性、特异性和灵敏度的检测能力的比较审查。由于具有广泛的机器学习功能,这些模型使用Python环境进行测试。实验结果表明,随机森林模型是基于网络的入侵检测系统的理想模型
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparative analysis of gradient boosting, random forest and deep neural networks in intrusion detection system
The growing threat of advanced security attacks targeting enterprise information systems raises the need for novel security solutions that promptly identify and respond to these issues. These security strategies must automate threat detection and response in enterprise settings, enabling organizations to address emerging threats, ongoing attacks, and imminent risks adequately. Traditional security strategies that rely on rule-based approaches for intrusion detection systems are inefficient in achieving these objectives due to their limited capabilities in identifying new threats. As a result, machine learning strategies have been proposed to address these needs, offering an intelligent detection environment for novel threats. Classification algorithms such as random forest, gradient boosting and deep learning techniques like deep neural networks have been proposed in various studies. This paper examines the performance of these models, providing a comparative review of their detection capabilities based on precision, recall, accuracy, specificity, and sensitivity. The models are tested using a Python environment due to the extensive machine learning capabilities. These tests show that random forest is the ideal model for network-based intrusion detection systems
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来源期刊
ARPN Journal of Engineering and Applied Sciences
ARPN Journal of Engineering and Applied Sciences Engineering-Engineering (all)
CiteScore
0.70
自引率
0.00%
发文量
7
期刊介绍: ARPN Journal of Engineering and Applied Sciences (ISSN 1819-6608) is an online peer-reviewed International research journal aiming at promoting and publishing original high quality research in all disciplines of engineering sciences and technology. All research articles submitted to ARPN-JEAS should be original in nature, never previously published in any journal or presented in a conference or undergoing such process across the globe. All the submissions will be peer-reviewed by the panel of experts associated with particular field. Submitted papers should meet the internationally accepted criteria and manuscripts should follow the style of the journal for the purpose of both reviewing and editing. Our mission is -In cooperation with our business partners, lower the world-wide cost of research publishing operations. -Provide an infrastructure that enriches the capacity for research facilitation and communication, among researchers, college and university teachers, students and other related stakeholders. -Reshape the means for dissemination and management of information and knowledge in ways that enhance opportunities for research and learning and improve access to scholarly resources. -Expand access to research publishing to the public. -Ensure high-quality, effective and efficient production and support good research and development activities that meet or exceed the expectations of research community. Scope of Journal of Engineering and Applied Sciences: -Engineering Mechanics -Construction Materials -Surveying -Fluid Mechanics & Hydraulics -Modeling & Simulations -Thermodynamics -Manufacturing Technologies -Refrigeration & Air-conditioning -Metallurgy -Automatic Control Systems -Electronic Communication Systems -Agricultural Machinery & Equipment -Mining & Minerals -Mechatronics -Applied Sciences -Public Health Engineering -Chemical Engineering -Hydrology -Tube Wells & Pumps -Structures
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