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A COMPARATIVE ANALYSIS OF PHISHING WEBSITE DETECTION USING XGBOOST ALGORITHM

机译:使用XGBOOST算法进行网络钓鱼网站检测的比较分析

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摘要

As most of human activities are being moved to cyberspace, phishers and other cybercriminals are making the cyberspace unsafe by causing serious risks to users and businesses as well as threatening global security and economy. Nowadays, phishers are constantly evolving new methods for luring user to reveal their sensitive information. To avoid falling victim to cybercriminals, a phishing detection algorithms is very necessary to be developed. Machine learning or data mining algorithms are used for phishing detection such as classification that categorized cyber users in to either malicious or safe users or regression that predicts the chance of being attacked by some cybercriminals in a given period of time. Many techniques have been proposed in the past for phishing detection but due to dynamic nature of some of the many phishing strategies employed by the cybercriminals, the quest for better solution is still on. In this paper, we propose a new phishing detection model based on Extreme Gradient Boosted Tree (XGBOOST) algorithm. Experimental results demonstrated that XGBOOST-based phishing detection model is promising by returning an accuracy of 97.27% which outperformed both probabilistic Neural Network (PNN) and Random forest (RF) that returned accuracies of 96.79% and 95.66% respectively.
机译:随着大多数人类活动转移到网络空间,网络钓鱼者和其他网络犯罪分子通过给用户和企业造成严重风险以及威胁全球安全和经济,使网络空间变得不安全。如今,网络钓鱼者正在不断发展新的方法来诱使用户公开其敏感信息。为了避免成为网络犯罪分子的受害者,非常有必要开发网络钓鱼检测算法。机器学习或数据挖掘算法用于网络钓鱼检测,例如将网络用户分类为恶意用户或安全用户的分类,或预测在给定时间段内被某些网络犯罪分子攻击的机会的回归。过去已经提出了许多用于网络钓鱼检测的技术,但是由于网络犯罪分子采用的许多网络钓鱼策略中的某些是动态的,因此仍在寻求更好的解决方案。在本文中,我们提出了一种基于极端梯度增强树(XGBOOST)算法的网络钓鱼检测模型。实验结果表明,基于XGBOOST的网络钓鱼检测模型有望返回97.27%的准确性,其准确性优于概率神经网络(PNN)和随机森林(RF),后者的准确率分别为96.79%和95.66%。

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