Visible to the public Fast and Accurate Continuous User Authentication by Fusion of Instance-Based, Free-Text Keystroke Dynamics

TitleFast and Accurate Continuous User Authentication by Fusion of Instance-Based, Free-Text Keystroke Dynamics
Publication TypeConference Paper
Year of Publication2019
AuthorsAyotte, Blaine, Banavar, Mahesh K., Hou, Daqing, Schuckers, Stephanie
Conference Name2019 International Conference of the Biometrics Special Interest Group (BIOSIG)
ISBN Number978-3-88579-690-9
Keywordsaccount security, authorisation, behavioral biometric system, biometrics, biometrics (access control), consecutive keystrokes, Continuous Authentication, continuous user authentication, digraph, directed graphs, free-text data, free-text keystroke dynamics, fused classifier, Human Behavior, human factors, instance-based graph comparison algorithm, Keyboards, keystroke analysis, keystroke dynamics, keystroke dynamics systems, Metrics, monograph, pubcrawl, text analysis, user input text
Abstract

Keystroke dynamics study the way in which users input text via their keyboards, which is unique to each individual, and can form a component of a behavioral biometric system to improve existing account security. Keystroke dynamics systems on free-text data use n-graphs that measure the timing between consecutive keystrokes to distinguish between users. Many algorithms require 500, 1,000, or more keystrokes to achieve EERs of below 10%. In this paper, we propose an instance-based graph comparison algorithm to reduce the number of keystrokes required to authenticate users. Commonly used features such as monographs and digraphs are investigated. Feature importance is determined and used to construct a fused classifier. Detection error tradeoff (DET) curves are produced with different numbers of keystrokes. The fused classifier outperforms the state-of-the-art with EERs of 7.9%, 5.7%, 3.4%, and 2.7% for test samples of 50, 100, 200, and 500 keystrokes.

URLhttps://ieeexplore.ieee.org/document/8897242
Citation Keyayotte_fast_2019