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6Hit: A Reinforcement Learning-based Approach to Target Generation for Internet-wide IPv6 Scanning

机译:6HIT:基于互联网范围IPv6扫描的目标生成的加强学习方法

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Fast Internet-wide network measurement plays an important role in cybersecurity analysis and network asset detection. The vast address space of IPv6, however, makes it infeasible to apply a brute-force approach for scanning the entire network. Even worse, the extremely uneven distribution of IPv6 active addresses results in a low hit rate for active scanning. To address the problem, we propose 6Hit, a reinforcement learning-based target generation method for active address discovery in the IPv6 address space. It first divides the IPv6 address space into different regions according to the structural information of a set of known seed addresses. Then, it allocates exploration resources according to the reward of the scanning on each region. Based on the evaluative feedback from existing scanning results, 6Hit optimizes the subsequent search direction to regions that have a higher density of activity addresses. Compared with other state-of-the-art target generation methods, 6Hit achieves better performance on hit rate. Our experiments over real-world networks show that 6Hit achieves 3.5% - 11.5% hit rate for the eight candidate datasets, which is 7.7% - 630% improvement over the state-of-the-art methods.
机译:快速互联网范围的网络测量在网络安全分析和网络资产检测中起着重要作用。然而,IPv6的广大地址空间使得应用扫描整个网络的蛮力方法是不可行的。更糟糕的是,IPv6有效地址的极其不均匀的分布导致主动扫描的低击中率。要解决问题,我们提出了6个基于钢筋的基于学习的目标生成方法,用于IPv6地址空间中的主动地址发现。它首先根据一组已知种子地址的结构信息将IPv6地址空间划分为不同的区域。然后,它根据每个区域扫描的奖励来分配探索资源。基于现有扫描结果的评估反馈,6HIT优化后续搜索方向到具有较高活动地址密度的区域。与其他最先进的目标发电方法相比,6HIT实现了击中率的更好性能。我们对现实世界网络的实验表明,八个候选数据集的6.5% - 11.5%的击中率为3.7% - 最先进的方法提高了7.7% - 630%。

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