电子邮件安全威胁检测的深度学习方法研究

Mozamel M. Saeed, Zaher Al Aghbari
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引用次数: 0

摘要

电子邮件是最便宜、最容易使用的平台之一,涵盖了本世纪的每一个想法,如银行、个人登录数据库、学术信息、邀请、营销、广告、社会工程、基于网络技术的模型创建等。不受控制的发展和互联网的便捷接入是电子邮件通信日益不安全的原因。因此,本文旨在研究用于检测与电子邮件安全相关的威胁的深度学习方法。本研究整理了与深度学习方法相关的文献,这些方法适用于在不同组织的电子邮件网络安全领域提供安全。相关数据从不同的研究库中提取。本文讨论了处理这些威胁的各种解决方案。本文还针对现有解决方案中的社会工程、恶意软件、垃圾邮件和网络钓鱼等电子邮件安全威胁调查了不同的挑战和问题,以确定当前的核心问题,并为未来的研究设定道路。回顾分析表明,通信媒体是攻击者通过欺骗电子邮件和虚假网站进行欺诈活动的常见平台,本研究通过模型和技术的使用结合了深度学习方法在电子邮件安全威胁中的优缺点。该研究强调了深度学习方法在检测电子邮件安全威胁方面的对比。本综述研究设定了标准,包括涉及网络安全六种机器模型中至少一种的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Survey on Deep Learning Approaches for Detection of Email Security Threat
Emailing is among the cheapest and most easily accessible platforms, and covers every idea of the present century like banking, personal login database, academic information, invitation, marketing, advertisement, social engineering, model creation on cyber-based technologies, etc. The uncontrolled development and easy access to the internet are the reasons for the increased insecurity in email communication. Therefore, this review paper aims to investigate deep learning approaches for detecting the threats associated with e-mail security. This study compiles the literature related to the deep learning methodologies, which are applicable for providing safety in the field of cyber security of email in different organizations. Relevant data were extracted from different research depositories. The paper discusses various solutions for handling these threats. Different challenges and issues are also investigated for e-mail security threats including social engineering, malware, spam, and phishing in the existing solutions to identify the core current problem and set the road for future studies. The review analysis showed that communication media is the common platform for attackers to conduct fraudulent activities via spoofed e-mails and fake websites and this research has combined the merit and demerits of the deep learning approaches adaption in email security threat by the usage of models and technologies. The study highlighted the contrasts of deep learning approaches in detecting email security threats. This review study has set criteria to include studies that deal with at least one of the six machine models in cyber security.
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