研究确定输入流量内容类型的方法问题

I. Reva, M. Medvedev, Inna V. Vorontsova
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引用次数: 0

摘要

在网络安全和可信环境中,内容过滤是确保网络安全和功能的重要手段。它的工作原理是限制访问某些可能包含有害元素或构成重大感染风险的网站、电子邮件、文件或其他内容。内容过滤不仅能确保单个用户数据的安全,还能确保整个组织和机构网络的安全,有助于最大限度地降低恶意安全漏洞的风险。研究确定传入流量内容类型的方法是信息安全和网络分析领域的一个重要相关领域。在当今的互联网空间,大量数据通过网络传输,其中一项关键任务就是对这些流量进行分类,以确保安全和有效的网络管理。确定传入流量内容类型的方法是一套算法和方法,可以自动确定通过网络传输的数据类型。在研究确定传入流量内容类型方法问题的过程中,我们收集了网络流量数据,选择了用于训练模型的数据集,考虑了分类器算法,并重点研究了评估分类效率的指标。研究结果可用于创建有效的系统,以检测恶意或不需要的内容、过滤数据或优化网络资源的运行。研究确定传入流量中内容类型的方法具有重要的现实意义,可应用于信息安全、网络分析、网络资源监控和网络流程优化等多个领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study of the issues of methods for determining the type of content in incoming traffic
Content filtering in the context of cybersecurity and trusted environments is an important tactic used to ensure network security and functionality. It works by restricting access to certain websites, emails, files or other content that may contain harmful elements or pose a significant risk of infection. Content filtering ensures the security not only of an individual user's data, but also of an entire network of organizations and institutions, helping to minimize the risk of malicious security breaches. The study of methods for determining the type of content in incoming traffic is a relevant and important area in the field of information security and network analytics. In today's Internet space, a significant amount of data is transmitted through networks, and one of the key tasks is the classification of this traffic to ensure security and effective network management. Methods for determining the type of content in incoming traffic are a set of algorithms and approaches that allow you to automatically determine what type of data is transmitted over the network. In the course of studying the problems of methods for determining the type of content in incoming traffic, data on network traffic is collected, a data set is selected for training the model, we consider classifier algorithms and focus on metrics for assessing classification efficiency. The results of the study can be used to create effective systems for detecting malicious or unwanted content, filtering data, or optimizing the operation of network resources. The study of methods for determining the type of content in incoming traffic is of practical importance and can be applied in various fields, including information security, network analytics, monitoring of network resources and optimization of network processes.
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