Visible to the public On Accuracy of Keystroke Authentications Based on Commonly Used English Words

TitleOn Accuracy of Keystroke Authentications Based on Commonly Used English Words
Publication TypeConference Paper
Year of Publication2015
AuthorsDarabseh, A., Namin, A. Siami
Conference Name2015 International Conference of the Biometrics Special Interest Group (BIOSIG)
Date Publishedsep
Keywordscommonly used English words, cryptography, digraph time latency feature, flight time latency feature, k-nearest neighbor classifier, K-NN, key duration feature, keystroke authentications, keystroke dynamics authentication systems, keystroke features, learning (artificial intelligence), machine learning techniques, naïve Bayes classifier, natural language processing, one-class support vector machine SVM, pattern classification, pubcrawl170115, Support vector machines, two-class support vector machine SVM, user active authentication, word total time duration feature
Abstract

The aim of this research is to advance the user active authentication using keystroke dynamics. Through this research, we assess the performance and influence of various keystroke features on keystroke dynamics authentication systems. In particular, we investigate the performance of keystroke features on a subset of most frequently used English words. The performance of four features such as i) key duration, ii) flight time latency, iii) digraph time latency, and iv) word total time duration are analyzed. Experiments are performed to measure the performance of each feature individually as well as the results from the different subsets of these features. Four machine learning techniques are employed for assessing keystroke authentications. The selected classification methods are two-class support vector machine (TC) SVM, one-class support vector machine (OC) SVM, k-nearest neighbor classifier (K-NN), and Naive Bayes classifier (NB). The logged experimental data are captured for 28 users. The experimental results show that key duration time offers the best performance result among all four keystroke features, followed by word total time. Furthermore, our results show that TC SVM and KNN perform the best among the four classifiers.

URLhttps://ieeexplore.ieee.org/document/7314612/
DOI10.1109/BIOSIG.2015.7314612
Citation Keydarabseh_accuracy_2015-1