基于特征工程和强化学习的匿名流量检测

Dazhou Liu, Younghee Park
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引用次数: 0

摘要

匿名网络的主要目的是保护用户身份,作为加强网络安全和匿名性的工具,匿名网络的地位日益突出。然而,这些网络已成为敌对事务的平台和可疑攻击流量的来源。为了抵御互联网上不可预测的对手,检测匿名网络流量已成为一种必要。许多识别匿名流量的监督方法都采用了机器学习策略。然而,许多方法需要访问工程数据集和复杂的架构才能提取所需的信息。由于匿名网络流量对流量分析的阻力以及公开可用数据集的稀缺性,这些方法可能需要提高训练效率,并在匿名流量检测方面实现更高的性能。本研究利用特征工程技术提取匿名流量静态痕迹的模式信息,并对其特征重要性进行排序。为了有效利用这些模式属性,我们开发了一个强化学习框架,其中包括四个关键部分:状态、行动、奖励和状态转换。我们设计了一个轻量级系统来对匿名和非匿名网络流量进行分类。随后,提出了两个微调阈值来替代二元分类系统中的传统标签。该系统无需依赖标签数据就能识别匿名网络流量。实验结果表明,该系统识别匿名流量的准确率超过 80%(基于模式信息)。
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Anonymous Traffic Detection Based on Feature Engineering and Reinforcement Learning
Anonymous networks, which aim primarily to protect user identities, have gained prominence as tools for enhancing network security and anonymity. Nonetheless, these networks have become a platform for adversarial affairs and sources of suspicious attack traffic. To defend against unpredictable adversaries on the Internet, detecting anonymous network traffic has emerged as a necessity. Many supervised approaches to identify anonymous traffic have harnessed machine learning strategies. However, many require access to engineered datasets and complex architectures to extract the desired information. Due to the resistance of anonymous network traffic to traffic analysis and the scarcity of publicly available datasets, those approaches may need to improve their training efficiency and achieve a higher performance when it comes to anonymous traffic detection. This study utilizes feature engineering techniques to extract pattern information and rank the feature importance of the static traces of anonymous traffic. To leverage these pattern attributes effectively, we developed a reinforcement learning framework that encompasses four key components: states, actions, rewards, and state transitions. A lightweight system is devised to classify anonymous and non-anonymous network traffic. Subsequently, two fine-tuned thresholds are proposed to substitute the traditional labels in a binary classification system. The system will identify anonymous network traffic without reliance on labeled data. The experimental results underscore that the system can identify anonymous traffic with an accuracy rate exceeding 80% (when based on pattern information).
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