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首页> 外文期刊>Journal of information & knowledge management >Data Analytics: Intelligent Anti-Phishing Techniques Based on Machine Learning
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Data Analytics: Intelligent Anti-Phishing Techniques Based on Machine Learning

机译:数据分析:基于机器学习的智能防护技术

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摘要

According to the international body Anti-Phishing Work Group (APWG), phishing activities have skyrocketed in the last few years and more online users are becoming susceptible to phishing attacks and scams. While many online users are vulnerable and naive to the phishing attacks, playing catch-up to the phishers’ evolving strategies is not an option. Machine Learning techniques play a significant role in developing effective anti-phishing models. This paper looks at phishing as a classification problem and outlines some of the recent intelligent machine learning techniques (associative classifications, dynamic self-structuring neural network, dynamic rule-induction, etc.) in the literature that is used as anti-phishing models. The purpose of this review is to serve researchers, organisations’ managers, computer security experts, lecturers, and students who are interested in understanding phishing and its corresponding intelligent solutions. This will equip individuals with knowledge and skills that may prevent phishing on a wider context within the community.
机译:据国际机构反网络钓鱼工作组(APWG),在过去几年中,网络钓鱼活动已经飙升,更多的在线用户易受网络钓鱼攻击和诈骗的影响。虽然许多在线用户易受攻击和天真地对网络钓鱼攻击,但追赶到Phishers的不断发展策略不是一种选择。机器学习技术在开发有效的防护模型方面发挥着重要作用。本文探讨了作为分类问题的网络钓鱼,并概述了最近的一些智能机器学习技术(关联分类,动态自身结构性神经网络,动态规则 - 诱导等)用作抗网络钓鱼模型。本综述的目的是为研究人员,组织的管理者,计算机安全专家,讲师和有兴趣的学生提供服务,他们对理解网络钓鱼及其相应的智能解决方案。这将以具有知识和技能的知识和技能(可防止在社区内更广泛的背景)的知识和技能。

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