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Defending Internet of Things Against Malicious Domain Names using D-FENS

机译:使用D-FENS防御恶意域名的物联网

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Malicious domain names have long been pervasive in the global DNS (Domain Name System) infrastructure and lend themselves to undesirable activities such as phishing or even DNS-based attacks like distributed denial-of-service (DDoS) and DNS rebinding. With the rise and explosive growth of the Internet of Things (IoT), adversaries are exploiting these devices which typically lack security measures to launch DNS-based attacks through malicious domain names. Typical countermeasures against such malicious domain names employ blacklists and whitelists to determine which domain names should be resolved. While these domain lists offer fast lookup times, they require carefully curated and up-to-date information which tends to fall short of detecting newly-registered malicious domain names. In this work, we present a system called D-FENS (DNS Filtering & Extraction Network System) which works in tandem with blacklists and features a live DNS server and binary classifier to accurately predict unreported malicious domain names. The D-FENS classifier model operates at the character-level and leverages the use of deep learning architectures such as Convolutional Neural Networks (CNN) and Long Short-Term Memory networks (LSTM) for real-time classification which forgoes the need for feature-engineering typically associated with traditional machine learning approaches. Sourcing from free and open datasets, we evaluate our system and achieve a 0.95 area under the receiver operating characteristic curve for binary classification. By accurately predicting unreported malicious domain names in real-time, D-FENS prevents Internet-connected systems from unknowingly connecting to potentially malicious domain names.
机译:长期以来,恶意域名在全球DNS(域名系统)基础架构中普遍存在,并使其易于遭受网络钓鱼之类的不良活动,甚至导致基于DNS的攻击(例如分布式拒绝服务(DDoS)和DNS重新绑定)。随着物联网(IoT)的兴起和爆炸性增长,攻击者正在利用这些通常缺乏安全措施的设备通过恶意域名发起基于DNS的攻击。针对此类恶意域名的典型对策采用黑名单和白名单来确定应解析的域名。尽管这些域名列表提供了快速的查找时间,但它们需要精心策划和最新的信息,而这些信息往往无法检测到新注册的恶意域名。在这项工作中,我们提出了一个称为D-FENS(DNS过滤和提取网络系统)的系统,该系统与黑名单配合使用,并具有实时DNS服务器和二进制分类器,以准确预测未报告的恶意域名。 D-FENS分类器模型在角色级别运行,并利用了深度学习架构(例如卷积神经网络(CNN)和长期短期记忆网络(LSTM))的实时分类,从而避免了对功能的需求-通常与传统机器学习方法相关的工程。从自由和开放的数据集中采购,我们评估我们的系统并在接收器工作特性曲线下达到0.95区域,以进行二进制分类。通过实时准确地预测未报告的恶意域名,D-FENS可以防止与Internet连接的系统在不知不觉中连接到潜在的恶意域名。

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