Cracking-Resistant Password Vaults Using Natural Language Encoders

Rahul Chatterjee, Joseph Bonneau, Ari Juels, Thomas Ristenpart
2015 2015 IEEE Symposium on Security and Privacy  
Password vaults are increasingly popular applications that store multiple passwords encrypted under a single master password that the user memorizes. A password vault can greatly reduce the burden on a user of remembering passwords, but introduces a single point of failure. An attacker that obtains a user's encrypted vault can mount offline bruteforce attacks and, if successful, compromise all of the passwords in the vault. In this paper, we investigate the construction of encrypted vaults that
more » ... resist such offline cracking attacks and force attackers instead to mount online attacks. Our contributions are as follows. We present an attack and supporting analysis showing that a previous design for cracking-resistant vaults-the only one of which we are aware-actually degrades security relative to conventional password-based approaches. We then introduce a new type of secure encoding scheme that we call a natural language encoder (NLE). An NLE permits the construction of vaults which, when decrypted with the wrong master password, produce plausiblelooking decoy passwords. We show how to build NLEs using existing tools from natural language processing, such as n-gram models and probabilistic context-free grammars, and evaluate their ability to generate plausible decoys. Finally, we present, implement, and evaluate a full, NLE-based cracking-resistant vault system called NoCrack. IEEE Symposium on Security and Privacy
doi:10.1109/sp.2015.36 dblp:conf/sp/ChatterjeeBJR15 fatcat:opdswawyszdq5accuqmk3mnpea