USING MACHINE LEARNING METHODS IN CYBERSECURITY

S. R. Mubarakova,, S. Amanzholova, R. Uskenbayeva
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引用次数: 1

Abstract

Abstract Cybersecurity is an ever-changing field, with advances in technology that open up new opportunities for cyberattacks. In addition, even though serious secu- rity breaches are often reported, small organizations still have to worry about security breaches as they can often be the target of viruses and phishing. This is why it is so important to ensure the privacy of your user profile in cyberspace. The past few years have seen a rise in machine learning algorithms that address major cybersecu- rity issues such as intrusion detection systems (IDS), detection of new modifications of known malware, malware, and spam detection, and malware analysis. In this arti- cle, algorithms have been analyzed using data mining collected from various libraries, and analytics with additional emerging data-driven models to provide more effective security solutions. In addition, an analysis was carried out of companies that are en- gaged in cyber attacks using machine learning. According to the research results, it was revealed that the concept of cybersecurity data science allows you to make the computing process more efficient and intelligent compared to traditional processes in the field of cybersecurity. As a result, according to the results of the study, it was revealed that machine learning, namely unsupervised learning, is an effective method of dealing with risks in cybersecurity and cyberattacks.
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机器学习方法在网络安全中的应用
网络安全是一个不断变化的领域,随着技术的进步,为网络攻击开辟了新的机会。此外,尽管经常报告严重的安全漏洞,但小型组织仍然需要担心安全漏洞,因为它们经常成为病毒和网络钓鱼的目标。这就是为什么它是如此重要,以确保您的用户档案的隐私在网络空间。在过去的几年里,机器学习算法的兴起解决了主要的网络安全问题,如入侵检测系统(IDS),检测已知恶意软件的新修改,恶意软件和垃圾邮件检测,以及恶意软件分析。在本文中,使用从各种库收集的数据挖掘来分析算法,并使用其他新兴数据驱动模型进行分析,以提供更有效的安全解决方案。此外,还对使用机器学习进行网络攻击的公司进行了分析。根据研究结果显示,与网络安全领域的传统流程相比,网络安全数据科学的概念可以使计算过程更加高效和智能。因此,根据研究结果,揭示了机器学习,即无监督学习,是应对网络安全和网络攻击风险的有效方法。
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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