Phishing Detection in E-mails using Machine Learning

Srishti Rawal, Bhuvan Rawal, A. Shaheen, Shubham Malik
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引用次数: 12

Abstract

Emails are widely used as a means of communication for personal and professional use. The information exchanged over mails is often sensitive and confidential such as banking information, credit reports, login details etc. This makes them valuable to cyber criminals who can use the information for malicious purposes. Phishing is a strategy used by fraudsters to obtain sensitive information from people by pretending to be from recognized sources. In a phished email, the sender can convince you to provide personal information under false pretenses. This experimentation considers the detection of a phished email as a classification problem and this paper describes the use of machine learning algorithms to classify emails as phished or ham. Maximum accuracy of 99. 87% is achieved in classification of emails using SVM and Random Forest classifier. General Terms Phishing, security, classification
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利用机器学习检测电子邮件中的网络钓鱼
电子邮件被广泛用作个人和专业的沟通手段。通过邮件交换的信息通常是敏感和机密的,如银行信息、信用报告、登录详细信息等。这对网络罪犯来说很有价值,他们可以利用这些信息进行恶意攻击。网络钓鱼是欺诈者假装来自公认的来源,从人们那里获取敏感信息的一种策略。在网络钓鱼邮件中,发件人会以虚假的借口说服你提供个人信息。该实验将检测钓鱼电子邮件视为一个分类问题,本文描述了使用机器学习算法将电子邮件分类为钓鱼电子邮件或火腿。最高精度99。使用SVM和随机森林分类器对电子邮件进行分类,准确率达到87%。网络钓鱼,安全,分类
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