论文标题
6GAN:IPv6通过增强学习的生成对抗网的IPv6多模式目标生成
6GAN: IPv6 Multi-Pattern Target Generation via Generative Adversarial Nets with Reinforcement Learning
论文作者
论文摘要
由于网络速度和计算能力有限,全球IPv6扫描一直是研究人员的挑战。最近提出了目标生成算法来克服互联网评估的问题,以预测扫描的候选人。但是,IPv6自定义地址配置出现了不同的地址模式,阻碍了算法推断。广泛的IPv6别名也可能误导算法以发现别名区域而不是有效的主机目标。在本文中,我们介绍了6gan,这是一种具有生成的对抗网(GAN)和增强目标的新型架构,用于多模式目标生成。 6GAN强迫多个发电机用多类鉴别器和别名检测器训练,以生成具有不同地址模式类型的非确定性主动目标。歧视者和别名检测器的奖励有助于监督地址序列决策过程。经过对抗训练后,6gan的发电机可以保持每种模式的强大模仿能力,而6gan的歧视器则具有0.966的精度,获得了出色的模式歧视能力。实验表明,我们的工作表现优于最先进的目标生成算法,通过达到高质量的候选算法。
Global IPv6 scanning has always been a challenge for researchers because of the limited network speed and computational power. Target generation algorithms are recently proposed to overcome the problem for Internet assessments by predicting a candidate set to scan. However, IPv6 custom address configuration emerges diverse addressing patterns discouraging algorithmic inference. Widespread IPv6 alias could also mislead the algorithm to discover aliased regions rather than valid host targets. In this paper, we introduce 6GAN, a novel architecture built with Generative Adversarial Net (GAN) and reinforcement learning for multi-pattern target generation. 6GAN forces multiple generators to train with a multi-class discriminator and an alias detector to generate non-aliased active targets with different addressing pattern types. The rewards from the discriminator and the alias detector help supervise the address sequence decision-making process. After adversarial training, 6GAN's generators could keep a strong imitating ability for each pattern and 6GAN's discriminator obtains outstanding pattern discrimination ability with a 0.966 accuracy. Experiments indicate that our work outperformed the state-of-the-art target generation algorithms by reaching a higher-quality candidate set.