Password Cracking Using Probabilistic Context-Free Grammars

Berkeley, CA(2009)

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摘要
Choosing the most effective word-mangling rules to use when performing a dictionary-based password cracking attack can be a difficult task. In this paper we discuss a new method that generates password structures in highest probability order. We first automatically create a probabilistic context-free grammar based upon a training set of previously disclosed passwords. This grammar then allows us to generate word-mangling rules, and from them, password guesses to be used in password cracking. We will also show that this approach seems to provide a more effective way to crack passwords as compared to traditional methods by testing our tools and techniques on real password sets. In one series of experiments, training on a set of disclosed passwords, our approach was able to crack 28% to 129% more passwords than John the Ripper, a publicly available standard password cracking program.
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关键词
highest probability order,password guess,computer crime,probabilistic context-free grammars,index terms — computer security,real password set,password structure,dictionary-based password,data security,word-mangling rule,effective word-mangling rule,probabilistic context-free grammar,difficult task,available standard password,computer security,probability,testing,production,hardware,dictionaries,data mining,access control,context free grammars,probabilistic logic,indexing terms,privacy,computer science,markov processes
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