论文标题

DNS打字机检测的基于合奏的特征选择和分类模型

Ensemble-based Feature Selection and Classification Model for DNS Typo-squatting Detection

论文作者

Moubayed, Abdallah, Aqeeli, Emad, Shami, Abdallah

论文摘要

域名系统(DNS)在当前基于IP的Internet体系结构中起着重要作用。这是因为它执行IP分辨率的域名。但是,由于其中缺乏数据完整性和来源身份验证,DNS协议具有多个安全漏洞。本文重点介绍了一个特定的安全漏洞,即打字机。 Typo-Squatting是指与现有流行品牌的域名注册,其目标是将用户重定向到恶意/可疑网站。打字机的危险在于,它可能导致信息威胁,公司秘密泄漏,并可以促进欺诈。本文建立在我们以前在[1]中的工作,该论文仅提出了基于多数投票的分类器,该论文提出了基于合奏的功能选择和包装分类模型来检测DNS错别字式攻击。实验结果表明,所提出的框架在识别恶意/可疑的错别字阶段域(与使用完整功能集的模型相比,较小的计算复杂性)相比,在识别恶意/可疑的错别字阶段域(最多损失的精度最多为1.5%,精确度最多为1.5%,精确度最高为5%),同时具有较低的计算复杂性(由于功能设置的较小50%的降低了50%)。

Domain Name System (DNS) plays in important role in the current IP-based Internet architecture. This is because it performs the domain name to IP resolution. However, the DNS protocol has several security vulnerabilities due to the lack of data integrity and origin authentication within it. This paper focuses on one particular security vulnerability, namely typo-squatting. Typo-squatting refers to the registration of a domain name that is extremely similar to that of an existing popular brand with the goal of redirecting users to malicious/suspicious websites. The danger of typo-squatting is that it can lead to information threat, corporate secret leakage, and can facilitate fraud. This paper builds on our previous work in [1], which only proposed majority-voting based classifier, by proposing an ensemble-based feature selection and bagging classification model to detect DNS typo-squatting attack. Experimental results show that the proposed framework achieves high accuracy and precision in identifying the malicious/suspicious typo-squatting domains (a loss of at most 1.5% in accuracy and 5% in precision when compared to the model that used the complete feature set) while having a lower computational complexity due to the smaller feature set (a reduction of more than 50% in feature set size).

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