作者
Jerry Ma, Weining Yang, Min Luo, Ninghui Li
发表日期
2014/5/18
研讨会论文
2014 IEEE Symposium on Security and Privacy
页码范围
689-704
出版商
IEEE
简介
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 …
引用总数
201520162017201820192020202120222023202419244134434538362618
学术搜索中的文章
J Ma, W Yang, M Luo, N Li - 2014 IEEE Symposium on Security and Privacy, 2014