Malware Attack Detection in Large Scale Networks using the Ensemble Deep Restricted Boltzmann Machine

IF 1.5 0 ENGINEERING, MULTIDISCIPLINARY
Janani Kumar, Gunasundari Ranganathan
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引用次数: 0

Abstract

Today, cyber attackers use Artificial Intelligence (AI) to boost the sophistication and scope of their attacks. On the defense side, AI is used to improve defense plans, robustness, flexibility, and efficiency of defense systems by adapting to environmental changes. With the developments in information and communication technologies, various exploits that are changing rapidly constitute a danger sign for cyber security. Cybercriminals use new and sophisticated tactics to boost their attack speed and size. Consequently, there is a need for more flexible, adaptable, and strong cyber defense systems that can identify a wide range of threats in real time. In recent years, the adoption of AI approaches has increased and maintained a vital role in the detection and prevention of cyber threats. This paper presents an Ensemble Deep Restricted Boltzmann Machine (EDRBM) to classify cybersecurity threats in large-scale network environments. EDRBM acts as a classification model that enables the classification of malicious flowsets in a large-scale network. Simulations were carried out to evaluate the efficacy of the proposed EDRBM model under various malware attacks. The results showed that the proposed method achieved a promising malware classification rate in malicious flowsets.
基于集成深度受限玻尔兹曼机的大规模网络恶意软件攻击检测
如今,网络攻击者使用人工智能(AI)来提高攻击的复杂性和范围。在国防方面,人工智能通过适应环境变化,提高国防系统的防御计划、鲁棒性、灵活性和效率。随着信息通信技术的发展,各种漏洞的快速变化构成了网络安全的危险信号。网络罪犯使用新的和复杂的策略来提高他们的攻击速度和规模。因此,需要更灵活、适应性强、更强大的网络防御系统,以实时识别各种威胁。近年来,采用人工智能方法在检测和预防网络威胁方面发挥了越来越重要的作用。提出了一种集成深度受限玻尔兹曼机(EDRBM),用于大规模网络环境下的网络安全威胁分类。EDRBM作为一种分类模型,能够对大规模网络中的恶意流集进行分类。通过仿真,评估了EDRBM模型在各种恶意软件攻击下的有效性。结果表明,该方法在恶意流集中实现了较高的恶意分类率。
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来源期刊
Engineering, Technology & Applied Science Research
Engineering, Technology & Applied Science Research ENGINEERING, MULTIDISCIPLINARY-
CiteScore
3.00
自引率
46.70%
发文量
222
审稿时长
11 weeks
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