Machine Learning Based Prediction versus Human-as-a-Security-Sensor

S. Haque
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Abstract

Phishing is one of the most common cyber threats in the world today. It is a type of social engineering attack where the attacker lures unsuspecting victims into carrying out certain tasks mostly to steal personal and sensitive information. These stolen information are exploited to commit further crimes e.g. blackmails, data theft, financial theft, malware installation etc. This study was carried out to tackle this problem by designing an anti-phishing learning algorithm to detect phishing emails and also to study the accuracies of human phishing prediction to machine prediction. A graphical user interface was designed to emulate an email-client system that popped-up a warning on detecting a phishing mail successfully and collection of predictions made by expert and non-expert users on anti-phishing techniques. These predictions were compared to the predictions made by the machine learning algorithm to compare the efficiencies of all predictions considered in this research. The performance of the classifier used was measured with metrics such as confusion matrix, accuracy, receiver operating characteristic curve and area under graph
基于机器学习的预测与人类作为安全传感器
网络钓鱼是当今世界上最常见的网络威胁之一。这是一种社会工程攻击,攻击者引诱毫无防备的受害者执行某些任务,主要是窃取个人和敏感信息。这些被盗的信息被利用来进行进一步的犯罪,例如勒索、数据盗窃、金融盗窃、安装恶意软件等。为了解决这一问题,本研究设计了一种反网络钓鱼学习算法来检测网络钓鱼邮件,并研究了人类网络钓鱼预测与机器预测的准确性。设计了一个图形用户界面来模拟电子邮件客户端系统,该系统在成功检测到网络钓鱼邮件时弹出警告,并收集专家和非专业用户对反网络钓鱼技术的预测。将这些预测与机器学习算法做出的预测进行比较,以比较本研究中考虑的所有预测的效率。使用混淆矩阵、准确率、接收者工作特征曲线和图下面积等指标来衡量所使用分类器的性能
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