Online Binary Models are Promising for Distinguishing Temporally Consistent Computer Usage Profiles Article

Giovanini, L, Ceschin, F, Silva, M et al. (2022). Online Binary Models are Promising for Distinguishing Temporally Consistent Computer Usage Profiles . 4(3), 412-423. 10.1109/TBIOM.2022.3179206

cited authors

  • Giovanini, L; Ceschin, F; Silva, M; Chen, A; Kulkarni, R; Banda, S; Lysaght, M; Qiao, H; Sapountzis, N; Sun, R; Matthews, B; Wu, DO; Gregio, A; Oliveira, D

authors

abstract

  • This paper investigates whether computer usage profiles comprised of process-, network-, mouse-, and keystroke-related events are unique and consistent over time in a naturalistic setting, discussing challenges and opportunities of using such profiles in applications of continuous authentication. We collected ecologically-valid computer usage profiles from 31 MS Windows 10 computer users over 8 weeks and submitted this data to comprehensive machine learning analysis involving a diverse set of online and offline classifiers. We found that: (i) profiles were mostly consistent over the 8-week data collection period, with most (83.9%) repeating computer usage habits on a daily basis; (ii) computer usage profiling has the potential to uniquely characterize computer users (with a maximum F-score of 99.90%); (iii) network-related events were the most relevant features to accurately recognize profiles (95.69% of the top features distinguishing users were network-related); and (iv) binary models were the most well-suited for profile recognition, with better results achieved in the online setting compared to the offline setting (maximum F-score of 99.90% vs. 95.50%).

publication date

  • July 1, 2022

Digital Object Identifier (DOI)

start page

  • 412

end page

  • 423

volume

  • 4

issue

  • 3