Litcius/Paper detail

Improving password guessing via representation learning

Dario Pasquini, Ankit Gangwal, Giuseppe Ateniese, Massimo Bernaschi, Mauro Conti

2021Research Padua Archive (University of Padua)71 citationsDOIOpen Access PDF

Abstract

Learning useful representations from unstructured data is one of the core challenges, as well as a driving force, of modern data-driven approaches. Deep learning has demonstrated the broad advantages of learning and harnessing such representations.In this paper, we introduce a deep generative model representation learning approach for password guessing. We show that an abstract password representation naturally offers compelling and versatile properties that open new directions in the extensively studied, and yet presently active, password guessing field. These properties can establish novel password generation techniques that are neither feasible nor practical with the existing probabilistic and non-probabilistic approaches. Based on these properties, we introduce: (1) A general framework for conditional password guessing that can generate passwords with arbitrary biases; and (2) an Expectation Maximization-inspired framework that can dynamically adapt the estimated password distribution to match the distribution of the attacked password set.

Topics & Concepts

PasswordComputer scienceArtificial intelligenceS/KEYProbabilistic logicPassword strengthCognitive passwordPassword crackingMaximizationMachine learningTheoretical computer scienceComputer securityOne-time passwordMathematicsMathematical optimizationUser Authentication and Security SystemsAdvanced Malware Detection TechniquesEmotion and Mood Recognition