Konferenzpaper
Autorenliste: Wiefling, Stephan; Dürmuth, Markus; Lo Iacono, Luigi
Erschienen in: Financial Cryptography and Data Security
Herausgeberliste: Borisov, N.; Diaz, C.
Jahr der Veröffentlichung: 2021
Seiten: 361-381
ISBN: 978-3-662-64330-3
eISBN: 978-3-662-64331-0
DOI Link: https://doi.org/10.1007/978-3-662-64331-0_19
Konferenz: 25th International Conference on Financial Cryptography and Data Security (FC 2021)
Serientitel: Lecture Notes in Computer Science
Serienzählung: 12675
Risk-based authentication (RBA) aims to strengthen password-based authentication rather than replacing it. RBA does this by monitoring and recording additional features during the login process. If feature values at login time differ significantly from those observed before, RBA requests an additional proof of identification. Although RBA is recommended in the NIST digital identity guidelines, it has so far been used almost exclusively by major online services. This is partly due to a lack of open knowledge and implementations that would allow any service provider to roll out RBA protection to its users.
Abstract:
To close this gap, we provide a first in-depth analysis of RBA characteristics in a practical deployment. We observed N = 780 users with 247 unique features on a real-world online service for over 1.8 years. Based on our collected data set, we provide (i) a behavior analysis of two RBA implementations that were apparently used by major online services in the wild, (ii) a benchmark of the features to extract a subset that is most suitable for RBA use, (iii) a new feature that has not been used in RBA before, and (iv) factors which have a significant effect on RBA performance. Our results show that RBA needs to be carefully tailored to each online service, as even small configuration adjustments can greatly impact RBA’s security and usability properties. We provide insights on the selection of features, their weightings, and the risk classification in order to benefit from RBA after a minimum number of login attempts.
Zitierstile
Harvard-Zitierstil: Wiefling, S., Dürmuth, M. and Lo Iacono, L. (2021) What’s in Score for Website Users: A Data-Driven Long-Term Study on Risk-Based Authentication Characteristics, in Borisov, N. and Diaz, C. (eds.) Financial Cryptography and Data Security. Berlin: Springer. pp. 361-381. https://doi.org/10.1007/978-3-662-64331-0_19
APA-Zitierstil: Wiefling, S., Dürmuth, M., & Lo Iacono, L. (2021). What’s in Score for Website Users: A Data-Driven Long-Term Study on Risk-Based Authentication Characteristics. In Borisov, N., & Diaz, C. (Eds.), Financial Cryptography and Data Security. (pp. 361-381). Springer. https://doi.org/10.1007/978-3-662-64331-0_19