Title :
Pattern Classification Methods for Keystroke Analysis
Author_Institution :
Sch. of Inf. Technol., Korea Univ. of Technol. & Educ.
Abstract :
Keystroke time intervals can be a discriminating feature in the verification and identification of computer users. This paper presents a comparison result obtained using several classification methods including k-NN (k-nearest neighbor), back-propagation neural networks, and Bayesian classification for keystroke identification. Performance of k-NN classification was best with small data samples available per user, while Bayesian classification was the most superior to others with large data samples per user. Thus, for Web-based online identification of users, it seems to be appropriate to selectively use either k-NN or Bayesian method according to the number of keystroke samples accumulated by each user
Keywords :
authorisation; backpropagation; belief networks; message authentication; neural nets; pattern classification; Bayesian classification; back-propagation neural network; k-nearest neighbor; keystroke analysis; pattern classification method; Authentication; Authorization; Bayesian methods; Data security; Information analysis; Keyboards; Neural networks; Pattern analysis; Pattern classification; Timing; Bayesian classifier; k-nearest neighbor; keystroke analysis; neural networks;
Conference_Titel :
SICE-ICASE, 2006. International Joint Conference
Conference_Location :
Busan
Print_ISBN :
89-950038-4-7
Electronic_ISBN :
89-950038-5-5
DOI :
10.1109/SICE.2006.314667