TL;DR
This paper presents a comprehensive long-term analysis of risk-based authentication (RBA) on a large-scale online service, offering insights, optimization methods, and open data to advance RBA research and deployment.
Contribution
It provides the first extensive real-world RBA analysis, optimization techniques, privacy evaluations, and an open dataset to support future research and practical implementation.
Findings
RBA can be effectively optimized for usability and security.
Round-trip time features can enhance user privacy.
Open data facilitates further RBA research.
Abstract
Risk-based authentication (RBA) aims to protect users against attacks involving stolen passwords. RBA monitors features during login, and requests re-authentication when feature values widely differ from previously observed ones. It is recommended by various national security organizations, and users perceive it more usable and equally secure than equivalent two-factor authentication. Despite that, RBA is still only used by very few online services. Reasons for this include a lack of validated open resources on RBA properties, implementation, and configuration. This effectively hinders the RBA research, development, and adoption progress. To close this gap, we provide the first long-term RBA analysis on a real-world large-scale online service. We collected feature data of 3.3 million users and 31.3 million login attempts over more than one year. Based on the data, we provide (i)…
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