Probabilistic password strength meters have been proved to be the most accurate tools to measure password strength. Unfortunately, by construction, they are limited to solely produce an opaque security estimation that fails to fully support the user during the password composition. In the present work, we move the first steps towards cracking the intelligibility barrier of this compelling class of meters. We show that probabilistic password meters inherently own the capability to describe the latent relation between password strength and password structure. In our approach, the security contribution of each character composing a password is disentangled and used to provide explicit fine-grained feedback for the user. Furthermore, unlike existing heuristic constructions, our method is free from any human bias, and, more importantly, its feedback has a clear probabilistic interpretation. In our contribution: (1) we formulate the theoretical foundations of interpretable probabilistic password strength meters; (2) we describe how they can be implemented via an efficient and lightweight deep learning framework suitable for client-side operability.

Interpretable Probabilistic Password Strength Meters via Deep Learning / Pasquini, Dario; Ateniese, Giuseppe; Bernaschi, Massimo. - 12308:(2020), pp. 502-522. (Intervento presentato al convegno ESORICS20: European Symposium on Research in Computer Security 2020 tenutosi a Virtual) [10.1007/978-3-030-58951-6_25].

Interpretable Probabilistic Password Strength Meters via Deep Learning

Pasquini, Dario
;
Ateniese, Giuseppe;Bernaschi, Massimo
2020

Abstract

Probabilistic password strength meters have been proved to be the most accurate tools to measure password strength. Unfortunately, by construction, they are limited to solely produce an opaque security estimation that fails to fully support the user during the password composition. In the present work, we move the first steps towards cracking the intelligibility barrier of this compelling class of meters. We show that probabilistic password meters inherently own the capability to describe the latent relation between password strength and password structure. In our approach, the security contribution of each character composing a password is disentangled and used to provide explicit fine-grained feedback for the user. Furthermore, unlike existing heuristic constructions, our method is free from any human bias, and, more importantly, its feedback has a clear probabilistic interpretation. In our contribution: (1) we formulate the theoretical foundations of interpretable probabilistic password strength meters; (2) we describe how they can be implemented via an efficient and lightweight deep learning framework suitable for client-side operability.
2020
ESORICS20: European Symposium on Research in Computer Security 2020
Password security, Deep Learning
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Interpretable Probabilistic Password Strength Meters via Deep Learning / Pasquini, Dario; Ateniese, Giuseppe; Bernaschi, Massimo. - 12308:(2020), pp. 502-522. (Intervento presentato al convegno ESORICS20: European Symposium on Research in Computer Security 2020 tenutosi a Virtual) [10.1007/978-3-030-58951-6_25].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1484881
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