首页> 外文期刊>Procedia Computer Science >Malicious Domain Detection Using Machine Learning On Domain Name Features, Host-Based Features and Web-Based Features
【24h】

Malicious Domain Detection Using Machine Learning On Domain Name Features, Host-Based Features and Web-Based Features

机译:使用机器学习在域名特征上的恶意域检测,基于主机的功能和基于Web的功能

获取原文
           

摘要

Internet has plenty of vulnerabilities which are exploited by cyber criminals to send spam, commit financial frauds, perform phishing, indulge in command & control, disseminate malware and other malicious activities. Many times these exploits are carried out through malicious domain names which are the vital part of an Internet resource URL. Few vulnerabilities in the Internet setup and its related administrative policies allows such malicious domain names to be registered with the DNS servers. Though blacklisting happens to be the simplest and quickest solution to identify such malicious domains, the technique cannot cope up with the speed at which the domain names are generated and registered, and hence we look forward for other effective means of identifying malicious domains. The researchers have been using features from DNS data and features from lexical analysis of domain names, but there exists a need to identify more related features and introduce machine-learning to meet challenges due to IP flux and domain flux.In this paper, we have introduced usage of web-based features of domain names in addition to using blacklists, DNS data and lexical features to identify malicious domains. Using the features extracted from the domain names, we build a classifier model using the logistic regression classification algorithm and use that classifier to identify benign and malicious domains. Our experiment is based on active DNS analysis and we look forward to take this work for passive DNS analysis.
机译:互联网拥有充足的漏洞,被网络犯罪分子利用,发送垃圾邮件,提交财务欺诈,执行网络钓鱼,沉迷于指挥和控制,传播恶意软件和其他恶意活动。这些漏洞多次通过恶意域名进行,这些域名是Internet资源URL的重要组成部分。 Internet安装程序中的一些漏洞及其相关的管理策略允许在DNS服务器中注册此类恶意域名。虽然黑名单恰好是识别此类恶意域的最简单和最快的解决方案,但该技术无法应对生成和注册域名的速度,因此我们期待识别恶意域的其他有效手段。研究人员一直在使用DNS数据和特征的特征,从域名的词汇分析,但需要确定更多相关特征并引入机器学习,以满足由于IP通量和域流量而遇到挑战。在本文中,我们有除了使用黑名单,DNS数据和词汇功能外,还引入了域名的基于Web的功能的用法来识别恶意域。使用从域名中提取的功能,我们使用逻辑回归分类算法构建分类器模型,并使用该分类器来识别良性和恶意域。我们的实验基于主动DNS分析,我们期待为被动DNS分析采取这项工作。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号