Digital Fortress - Web Application Malware Detection

P. V. Kishore Kumar, K. vamsi, J. manasa, S. D V Swaroop, V. gayatri
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引用次数: 0

Abstract

Currently, the risk of network information insecurity is increasing rapidly in number and level of danger. The method mostly used by hackers today is to attack end to end technology and exploit human vulnerabilities. These techniques include social engineering, phishing, pharming, etc. one of the steps in conducting these attacks is to deceive users with malicious Uniform Resource Locators (URLs). As results, malicious URL detection is of great interest nowadays. there have been several scientific studies showing a number of methods to detect malicious URLs based on machine learning and deep learning techniques. In this paper, we propose a malicious URL detection method using machine learning techniques based on our proposed URL behavior and attributes. moreover, bigdata technology is also exploited to improve the capability of detection malicious URLs based on abnormal behaviour. In short, the proposed detection system consists of a new set of URLs features and behavior, a machine learning algorithm, and a bigdata technology. the experimental results show that the proposed URL attributes and behaviour can help improve the ability to detect malicious URL significantly. This is suggested that the proposed system may be considered as an optimized and friendly used solution for malicious URL detection.
数字堡垒 - 网络应用程序恶意软件检测
当前,网络信息不安全的风险在数量和危害程度上都在迅速增加。目前,黑客最常用的方法是攻击端到端技术和利用人的弱点。这些技术包括社会工程学、网络钓鱼、制药等。进行这些攻击的步骤之一是用恶意统一资源定位器(URL)欺骗用户。因此,恶意 URL 检测如今备受关注。已有多项科学研究展示了基于机器学习和深度学习技术的多种恶意 URL 检测方法。本文根据我们提出的 URL 行为和属性,利用机器学习技术提出了一种恶意 URL 检测方法。实验结果表明,提出的 URL 属性和行为有助于显著提高检测恶意 URL 的能力。这表明所提出的系统可被视为恶意 URL 检测的优化和友好解决方案。
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