利用各种算法检测盗版网站

Maneesha K, Rajasekhar K, P. K, Venkata Prasad N
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引用次数: 0

摘要

当今互联网的一大问题是网络钓鱼,这是一种利用技术工具窃取敏感消费者数据的犯罪行为。网络钓鱼损失也在迅速增加。特征工程在网络钓鱼网站检测解决方案中的重要性,然而检测的精度是至关重要的,它取决于你已经知道的特征。此外,尽管从多个维度检索的特征更彻底,但提取这些特征的缺点是需要很长时间。为了解决这些问题,我们提出了一种新的方法,其中数据集包含数百万个URL,通过这种方法我们可以识别被钓鱼者攻击的URL。为了确定URL是否已被钓鱼者瞄准,使用了一些卷积神经网络算法,如CNN- lstm, CNN BI-LSTM, Logistic Regression和XG Boost,并通过使用训练过的数据集产生两种机器学习方法之间的图的正确性,并且更有可能产生灵敏度,特异性,精度,召回率和f1-score以及准确性图,混淆矩阵等
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Phreaking Website Using Various Algorithms
A big concern to the Internet nowadays is phishing, a crime that involves exploiting technological tools to steal sensitive consumer data. Phishing losses are also rising quickly. The importance of feature engineering in solutions for detection of phishing websites, however the precision of detection is crucial and it depends on the features you know already. Additionally, although features retrieved from multiple dimensions are more thorough, extracting these characteristics has the downside of taking a long time. To address these, we proposed a new approach in which dataset contains millions of URLs by this approach we can identify the URL which is attacked by the phisher. To deter-mine whether the URL has been targeted by the phisher, some of the Convolutional Neural Network algorithms like CNN-LSTM, CNN BI-LSTM, Logistic Regression, and XG Boost are utilized and resulting in the correctness of the graph between the two machine learning methods by using trained dataset and more likely to produce sensitivity, specificity, precision, recall, and f1-score along with accuracy graph, confusion matrices and also along
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