基于CNN和双向LSTM的网络钓鱼网站检测分析

A. Pooja, M. Sridhar
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引用次数: 5

摘要

网络钓鱼是一种重要的网络危害,网络钓鱼损失日益严重,它是通过电子手段剥夺用户敏感信息而造成的。特征工程对于网站检测网络钓鱼解决方案仍然至关重要,尽管检测的质量最终取决于先前对其特征的了解。此外,虽然从不同的测量中得到的功能更精确,但要去除这些特征需要花费大量时间。本文提出了一种多维度的网络攻击检测方法,通过深度学习的快速检测机制来克服这些局限性。第一步是通过深度学习提取并利用给定URL的字符序列特征进行快速分类;此步骤不包括第三方的支持或以前的网络钓鱼经验。它结合了统计url,网页代码功能,网站文本功能,并轻松地将深度学习分类在多维函数的第二级。该方法缩短了阈值的检测时间。实验结果表明,合理调整阈值可以提高检测效率。
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Analysis of Phishing Website Detection Using CNN and Bidirectional LSTM
Phishing is a critical internet hazard and phishing losses progressively and it is caused by electronic means to deprive the users of sensitive information. Feature engineering is remaining essential for website-detection phishing solutions, although the quality of detection depends ultimately on previous knowledge of its features. Moreover, while the functionalities derived from different measurements are more precise, these characteristics take a lot of time to remove. This suggest a multidimensional approach to the detection of phishings focused on a quick detection mechanism through deep learning to overcome these limitations. The first step is to extract and use the character sequence features of the given URL for rapid classification through in-depth learning; this step does not include support from third parties or previous experience in phishing. It combine statistical URLs, web page code functions, website text features and easily categorise Profound learning in the second level on multidimensional functions. By the approach, the detection time of the threshold is shortened. The experimental results show that a rational adjustment of the threshold allows for the efficiency of the detection.
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