Dynamic Multi-level Privilege Control in Behavior-based Implicit Authentication Systems Leveraging Mobile Devices
Yingyuan Yang, Xueli Huang, Yanhui Guo, and Jinyuan Stella Sun

TL;DR
This paper introduces a multi-level privilege control scheme for behavior-based implicit authentication on mobile devices, enhancing accuracy and reducing delay by dynamically adjusting user privileges based on behavior changes.
Contribution
It proposes a lightweight, dynamic privilege adjustment method that improves authentication accuracy and delay without retraining machine learning models.
Findings
Authentication accuracy increased by 18.63%.
Authentication delay reduced by 7.02 minutes on average.
System effectively handles behavior deviations without frequent retraining.
Abstract
Implicit authentication (IA) is gaining popularity over recent years due to its use of user behavior as the main input, relieving users from explicit actions such as remembering and entering passwords. However, such convenience comes with a cost of authentication accuracy and delay which we propose to improve in this paper. Authentication accuracy deteriorates as users' behaviors change as a result of mood, age, a change of routine, etc. Current authentication systems handle failed authentication attempts by locking the users out of their mobile devices. It is unsuitable for IA whose accuracy deterioration induces a high false reject rate, rendering the IA system unusable. Furthermore, existing IA systems leverage computationally expensive machine learning, which can introduce a large authentication delay. It is challenging to improve the authentication accuracy of these systems without…
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Taxonomy
TopicsUser Authentication and Security Systems · Advanced Malware Detection Techniques · Digital Mental Health Interventions
