A Study of Probabilistic Password Models

Jerry Ma, Weining Yang, Min Luo, Ninghui Li
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引用次数: 250

Abstract

A probabilistic password model assigns a probability value to each string. Such models are useful for research into understanding what makes users choose more (or less) secure passwords, and for constructing password strength meters and password cracking utilities. Guess number graphs generated from password models are a widely used method in password research. In this paper, we show that probability-threshold graphs have important advantages over guess-number graphs. They are much faster to compute, and at the same time provide information beyond what is feasible in guess-number graphs. We also observe that research in password modeling can benefit from the extensive literature in statistical language modeling. We conduct a systematic evaluation of a large number of probabilistic password models, including Markov models using different normalization and smoothing methods, and found that, among other things, Markov models, when done correctly, perform significantly better than the Probabilistic Context-Free Grammar model proposed in Weir et al., which has been used as the state-of-the-art password model in recent research.
概率密码模型的研究
概率密码模型为每个字符串分配一个概率值。这些模型对于研究是什么让用户选择更安全(或更不安全)的密码,以及构建密码强度计和密码破解实用程序非常有用。由密码模型生成的猜数图是密码研究中广泛使用的一种方法。在本文中,我们证明了概率阈值图比猜测数图有重要的优势。它们的计算速度要快得多,同时提供的信息超出了猜测数字图的可行性。我们还观察到,密码建模的研究可以从统计语言建模的大量文献中受益。我们对大量概率密码模型(包括使用不同归一化和平滑方法的马尔可夫模型)进行了系统评估,并发现,除其他外,马尔可夫模型在正确的情况下,表现明显优于Weir等人提出的概率上下文无关语法模型,该模型已被用作最近研究中最先进的密码模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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