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URLdeepDetect: A Deep Learning Approach for Detecting Malicious URLs Using Semantic Vector Models

机译:UrldeepDetect:使用语义矢量模型来检测恶意URL的深度学习方法

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摘要

Malicious Uniform Resource Locators (URLs) embedded in emails or Twitter posts have been used as weapons for luring susceptible Internet users into executing malicious content leading to compromised systems, scams, and a multitude of cyber-attacks. These attacks can potentially might cause damages ranging from fraud to massive data breaches resulting in huge financial losses. This paper proposes a hybrid deep-learning approach named URLdeepDetect for time-of-click URL analysis and classification to detect malicious URLs. URLdeepDetect analyzes semantic and lexical features of a URL by applying various techniques, including semantic vector models and URL encryption to determine a given URL as either malicious or benign. URLdeepDetect uses supervised and unsupervised mechanisms in the form of LSTM (Long Short-Term Memory) and k-means clustering for URL classification. URLdeepDetect achieves accuracy of 98.3% and 99.7% with LSTM and k-means clustering, respectively.
机译:嵌入电子邮件或Twitter帖子中的恶意统一资源定位器(URL)已被用作利用易感互联网用户进入执行恶意内容的武器,导致系统,诈骗和多种网络攻击。 这些攻击可能可能导致欺诈范围的损害损失导致大规模的数据漏洞导致巨大的经济损失。 本文提出了一个名为UrlDeepDetect的混合深度学习方法,用于单击URL分析和分类以检测恶意URL。 UrldeepDetect通过应用各种技术来分析URL的语义和词汇特征,包括语义矢量模型和URL加密,以确定给定的URL作为恶意或良性。 URLDeepDetect以LSTM(长短期内存)和K-means集群的形式使用监督和无监督机制,用于URL分类。 UrldeepDetect分别使用LSTM和K-Means聚类实现98.3%和99.7%的精度。

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