基于深度学习和多特征组合的网络钓鱼url检测

Tomas Rasymas, Laurynas Dovydaitis
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引用次数: 6

摘要

. 网络钓鱼检测主要是通过使用黑名单来完成的。但是,黑名单不能是详尽的,并且缺乏检测新生成的网络钓鱼url的能力。近年来,人们越来越关注探索机器学习技术,以提高网络钓鱼URL检测器的通用性。本文旨在展示我们对网络钓鱼URL分类的结果,其中比较了三种不同的特征:词汇特征、字符级嵌入和词级嵌入,以找到一种最大化网络钓鱼URL检测率的方法。在此基础上,提出了一种新的深度神经网络结构。所述深度神经网络由多个CNN和LSTM层组合而成。通过字符级嵌入和词级嵌入相结合,准确率达到94.4%。
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Detection of Phishing URLs by Using Deep Learning Approach and Multiple Features Combinations
. Phishing detection is mostly performed through the usage of blacklists. However, blacklists cannot be exhaustive and lack the ability to detect newly generated phishing URLs. In recent years, increased attention has been given to exploring machine learning techniques in order to improve the universality of phishing URL detectors. This article aims at presenting our results on phishing URLs classification where three different features: lexical features, character level embeddings, and word level embeddings were compared with the view to find an approach that maximizes the ratio of phishing URL detection. In addition, a new deep neural network architecture for that problem was suggested. The said deep neural network consists of combined multiple CNN and LSTM layers. The 94.4% accuracy was achieved by combining character and word level embeddings.
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