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  4. PassGAN: A Deep Learning Approach for Password Guessing
 
conference paper

PassGAN: A Deep Learning Approach for Password Guessing

Hitaj, Briland
•
Gasti, Paolo
•
Ateniese, Giuseppe
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January 1, 2019
Applied Cryptography And Network Security, Acns 2019
17th International Conference on Applied Cryptography and Network Security (ACNS)

State-of-the-art password guessing tools, such as HashCat and John the Ripper, enable users to check billions of passwords per second against password hashes. In addition to performing straightforward dictionary attacks, these tools can expand password dictionaries using password generation rules, such as concatenation of words (e.g., "password123456") and leet speak (e.g., "password" becomes "p4s5w0rd"). Although these rules work well in practice, creating and expanding them to model further passwords is a labor-intensive task that requires specialized expertise. To address this issue, in this paper we introduce PassGAN, a novel approach that replaces human-generated password rules with theory-grounded machine learning algorithms. Instead of relying on manual password analysis, PassGAN uses a Generative Adversarial Network (GAN) to autonomously learn the distribution of real passwords from actual password leaks, and to generate high-quality password guesses. Our experiments show that this approach is very promising. When we evaluated PassGAN on two large password datasets, we were able to surpass rule-based and state-of-the-art machine learning password guessing tools. However, in contrast with the other tools, PassGAN achieved this result without any a-priori knowledge on passwords or common password structures. Additionally, when we combined the output of PassGAN with the output of HashCat, we were able to match 51%-73% more passwords than with HashCat alone. This is remarkable, because it shows that PassGAN can autonomously extract a considerable number of password properties that current state-of-the art rules do not encode.

  • Details
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Type
conference paper
DOI
10.1007/978-3-030-21568-2_11
Web of Science ID

WOS:000501602600011

Author(s)
Hitaj, Briland
Gasti, Paolo
Ateniese, Giuseppe
Perez-Cruz, Fernando  
Date Issued

2019-01-01

Publisher

Springer International Publishing

Publisher place

Cham

Published in
Applied Cryptography And Network Security, Acns 2019
ISBN of the book

978-3-030-21568-2

978-3-030-21567-5

Series title/Series vol.

Lecture Notes in Computer Science

Volume

11464

Start page

217

End page

237

Subjects

Computer Science, Information Systems

•

Computer Science, Theory & Methods

•

Computer Science

•

passwords

•

privacy

•

generative adversarial networks (gan)

•

deep learning

•

authentication

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
SDSC  
Event nameEvent placeEvent date
17th International Conference on Applied Cryptography and Network Security (ACNS)

Bogota, Colombia

Jun 05-07, 2019

Available on Infoscience
December 21, 2019
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/164129
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