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Password Guessing Based on LSTM Recurrent Neural Networks

机译:基于LSTM递归神经网络的密码猜测

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摘要

Passwords are frequently used in data encryption and user authentication. Since people incline to choose meaningful words or numbers as their passwords, lots of passwords are easy to guess. This paper introduces a password guessing method based on Long Short-Term Memory recurrent neural networks. After training our LSTM neural network with 30 million passwords from leaked Rockyou dataset, the generated 3.35 billion passwords could cover 81.52% of the remaining Rockyou dataset. Compared with PCFG and Markov methods, this method shows higher coverage rate.
机译:密码经常用于数据加密和用户身份验证。由于人们倾向于选择有意义的单词或数字作为密码,因此很容易猜出很多密码。本文介绍了一种基于长短期记忆递归神经网络的密码猜测方法。用泄漏的Rockyou数据集中的3000万个密码训练了我们的LSTM神经网络后,生成的33.5亿个密码可以覆盖剩余Rockyou数据集的81.52 \%。与PCFG和Markov方法相比,该方法具有更高的覆盖率。

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