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Phishing website detection based on effective machine learning approach

机译:基于有效机器学习方法的网络钓鱼网站检测

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摘要

Phishing a form of cyber-attack, which has an adverse effect on people where the user is directed to fake websites and duped to reveal their sensitive and personal information which includes passwords of accounts, bank details, atm pin-card details etc. Hence protecting sensitive information from malwares or web phishing is difficult. Machine learning is a study of data analysis and scientific study of algorithms, which has shown results in recent times in opposing phishing pages when distinguished with visualization, legal solutions, including awareness workshops and classic anti-phishing approaches. This paper examines the applicability of ML techniques in identifying phishing attacks and report their positives and negatives. In specific, there are many ML algorithms that have been explored to declare the appropriate choice that serve as anti-phishing tools. We have designed a Phishing Classification system which extracts features that are meant to defeat common phishing detection approaches. We also make use of numeric representation along with the comparative study of classical machine learning techniques like Random Forest, K nearest neighbours, Decision Tree, Linear SVC classifier, One class SVM classifier and wrapper-based features selection which contains the metadata of URLs and use the information to determine if a website is legitimate or not.
机译:网络钓鱼的网络攻击形式,对用户被引导到假网站并欺骗的人具有不利影响,以揭示他们的敏感和个人信息,其中包括帐户密码,银行详细信息,ATM引脚卡详细等。因此,保护来自恶魔或卷筒纸网络钓鱼的敏感信息很难。机器学习是对算法的数据分析和科学研究的研究,其在近近次在与可视化,法律解决方案区分时的相反网络钓鱼页面的结果,包括认识研讨会和经典的防护方法。本文介绍了ML技术在识别网络钓鱼攻击时的适用性,并报告其积极和否定。 In specific, there are many ML algorithms that have been explored to declare the appropriate choice that serve as anti-phishing tools.我们设计了一种网络钓鱼分类系统,提取了打败常见网络钓鱼检测方法的特征。我们还利用数字表示以及古典机器学习技术的比较研究,如随机林,K最近邻居,决策树,线性SVC分类器,一个类SVM分类器和基于包装器的特征选择,其中包含URL的元数据和使用确定网站是否合法的信息。

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