GNPassGAN:用于拖网离线密码猜测的改进生成对抗网络

Fang Yu, Miguel Vargas Martin
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引用次数: 3

摘要

密码的安全性取决于对攻击者使用的策略的透彻理解。不幸的是,现实世界的对手使用实用的猜测策略,如字典攻击,这在密码安全研究中很难模拟。字典攻击必须仔细配置和修改,以表示实际的威胁。然而,这种方法需要难以复制的领域特定知识和专业知识。本文回顾了各种基于深度学习的密码猜测方法,这些方法不需要领域知识或对用户密码结构和组合的假设。它还介绍了GNPassGAN,一种基于生成对抗网络的密码猜测工具,用于拖网离线攻击。与最先进的PassGAN模型相比,GNPassGAN能够多猜测88.03%的密码,并减少31.69%的重复生成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GNPassGAN: Improved Generative Adversarial Networks For Trawling Offline Password Guessing
The security of passwords depends on a thorough understanding of the strategies used by attackers. Unfortunately, real-world adversaries use pragmatic guessing tactics like dictionary attacks, which are difficult to simulate in password security research. Dictionary attacks must be carefully configured and modified to represent an actual threat. This approach, however, needs domain-specific knowledge and expertise that are difficult to duplicate. This paper reviews various deep learning-based password guessing approaches that do not require domain knowledge or assumptions about users' password structures and combinations. It also introduces GNPassGAN, a password guessing tool built on generative adversarial networks for trawling offline attacks. In comparison to the state-of-the-art PassGAN model, GNPassGAN is capable of guessing 88.03% more passwords and generating 31.69% fewer duplicates.
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