Active Authentication on Mobile Devices via Stylometry, Application Usage, Web Browsing, and GPS Location
March 29, 2015 Β· Declared Dead Β· π IEEE Systems Journal
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Authors
Lex Fridman, Steven Weber, Rachel Greenstadt, Moshe Kam
arXiv ID
1503.08479
Category
cs.CR: Cryptography & Security
Cross-listed
stat.ML
Citations
181
Venue
IEEE Systems Journal
Last Checked
4 months ago
Abstract
Active authentication is the problem of continuously verifying the identity of a person based on behavioral aspects of their interaction with a computing device. In this study, we collect and analyze behavioral biometrics data from 200subjects, each using their personal Android mobile device for a period of at least 30 days. This dataset is novel in the context of active authentication due to its size, duration, number of modalities, and absence of restrictions on tracked activity. The geographical colocation of the subjects in the study is representative of a large closed-world environment such as an organization where the unauthorized user of a device is likely to be an insider threat: coming from within the organization. We consider four biometric modalities: (1) text entered via soft keyboard, (2) applications used, (3) websites visited, and (4) physical location of the device as determined from GPS (when outdoors) or WiFi (when indoors). We implement and test a classifier for each modality and organize the classifiers as a parallel binary decision fusion architecture. We are able to characterize the performance of the system with respect to intruder detection time and to quantify the contribution of each modality to the overall performance.
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