An application for predicting phishing attacks: A case of implementing a support vector machine learning model

Emmanuel Song Shombot , Gilles Dusserre , Robert Bestak , Nasir Baba Ahmed
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引用次数: 0

Abstract

The imminent threat that phishing websites poses is a major concern for internet users worldwide. These fraudulent websites are crafted by cyber attackers to appear trustworthy and deceive vulnerable users into divulging confidential data like medical health records, credit card details, passwords, and Personal Identifiable information (PII). To bait their victims, cybercriminals employ tactics such as social engineering, spear-phishing attacks, and email phishing scams. As a result, unsuspecting individuals may be enticed to visit these websites, putting their sensitive information at risk. This work presents an application designed to predict phishing attacks after comparing polynomial and radial basis function of support vector machine (SVM). The proposed application leverages a dataset of known legitimate, suspicious and phishing attacks stored in a database and employs an SVM algorithm for classification based on user input. The application provides a user-friendly graphical user interface (GUI) that allows reporting of new phishing incidents based on the features that have strong relationship in determining if a website is phishing or not. The proposed application utilizes the inherent scalability of database technology to support record expansion whenever there is an instance of a user initiating phishing prediction thereby, making it suitable for use in a wide range of organizational settings.

预测网络钓鱼攻击的应用程序:实施支持向量机学习模型的案例
网络钓鱼网站带来的威胁迫在眉睫,是全球互联网用户的一大担忧。这些欺诈网站由网络攻击者精心设计,看似可信,欺骗易受攻击的用户泄露医疗健康记录、信用卡详情、密码和个人身份信息(PII)等机密数据。为了诱骗受害者,网络犯罪分子采用社交工程、鱼叉式网络钓鱼攻击和电子邮件网络钓鱼诈骗等策略。因此,毫无戒心的人可能会被引诱访问这些网站,从而将他们的敏感信息置于危险之中。本作品介绍了一种应用,旨在通过比较支持向量机(SVM)的多项式和径向基函数来预测网络钓鱼攻击。拟议的应用程序利用数据库中存储的已知合法、可疑和网络钓鱼攻击数据集,并采用 SVM 算法根据用户输入进行分类。该应用程序提供了一个用户友好型图形用户界面(GUI),可根据与确定网站是否为网络钓鱼有密切关系的特征报告新的网络钓鱼事件。拟议的应用程序利用数据库技术固有的可扩展性,在出现用户发起网络钓鱼预测的实例时支持记录扩展,从而使其适合在广泛的组织环境中使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.20
自引率
0.00%
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