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面向教育行业的半监督多数加权投票反网络钓鱼攻击 IDS。

A Semisupervised Majority Weighted Vote Antiphishing Attacks IDS for the Education Industry.

机构信息

Zhengzhou Preschool Education College, Zhengzhou 450000, China.

出版信息

Comput Intell Neurosci. 2022 Mar 31;2022:7402085. doi: 10.1155/2022/7402085. eCollection 2022.

DOI:10.1155/2022/7402085
PMID:35401723
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8989555/
Abstract

Although the digital transformation is advancing, a significant portion of the population in all countries of the world is not familiar with the technological means that allow malicious users to deceive them and gain great financial benefits using phishing techniques. Phishing is an act of deception of Internet users. The perpetrator pretends to be a credible entity, abusing the lack of protection provided by electronic tools and the ignorance of the victim (user) to illegally obtain personal information, such as bank account codes and sensitive private data. One of the most common targets for digital phishing attacks is the education sector, as distance learning became necessary for billions of students worldwide during the pandemic. Many educational institutions were forced to transition to the digital environment with minimal or no preparation. This paper presents a semisupervised majority-weighted vote system for detecting phishing attacks in a unique case study for the education sector. A realistic majority weighted vote scheme is used to optimize learning ability in selecting the most appropriate classifier, which proves to be exceptionally reliable in complex decision-making environments. In particular, the voting naive Bayes positive algorithm is presented, which offers an innovative approach to the probabilistic part-supervised learning process, which accurately predicts the class of test snapshots using prerated training snapshots only from the positive class examples.

摘要

尽管数字化转型正在推进,但世界各国仍有相当一部分人口不熟悉那些允许恶意用户使用网络钓鱼技术欺骗他们并从中获取巨大经济利益的技术手段。网络钓鱼是一种欺骗互联网用户的行为。作案者假装成可信的实体,滥用电子工具提供的保护不足和受害者(用户)的无知,非法获取个人信息,如银行账户代码和敏感的私人数据。数字网络钓鱼攻击最常见的目标之一是教育部门,因为在大流行期间,全球数亿学生都需要远程学习。许多教育机构被迫在几乎没有准备的情况下过渡到数字环境。本文提出了一种半监督多数加权投票系统,用于在针对教育部门的独特案例研究中检测网络钓鱼攻击。使用现实的多数加权投票方案来优化选择最合适的分类器的学习能力,这在复杂的决策环境中被证明是非常可靠的。特别是,提出了投票朴素贝叶斯正例算法,它为概率部分监督学习过程提供了一种创新方法,该方法仅使用来自正例类的预评分训练快照,即可准确预测测试快照的类。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/30b7/8989555/8e37a935414f/CIN2022-7402085.002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/30b7/8989555/1f7e397182dc/CIN2022-7402085.001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/30b7/8989555/8e37a935414f/CIN2022-7402085.002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/30b7/8989555/1f7e397182dc/CIN2022-7402085.001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/30b7/8989555/8e37a935414f/CIN2022-7402085.002.jpg

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本文引用的文献

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The Discrete Gaussian Expectation Maximization (Gradient) Algorithm for Differential Privacy.离散高斯期望最大化(梯度)算法用于差分隐私。
Comput Intell Neurosci. 2021 Dec 30;2021:7962489. doi: 10.1155/2021/7962489. eCollection 2021.
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A comprehensive survey of AI-enabled phishing attacks detection techniques.
对人工智能驱动的网络钓鱼攻击检测技术的全面调查。
Telecommun Syst. 2021;76(1):139-154. doi: 10.1007/s11235-020-00733-2. Epub 2020 Oct 23.