Litcius/Paper detail

Age and Gender as Cyber Attribution Features in Keystroke Dynamic-Based User Classification Processes

Ioannis Tsimperidis, Çağatay Yücel, Vasilios Katos

2021Electronics19 citationsDOIOpen Access PDF

Abstract

Keystroke dynamics are used to authenticate users, to reveal some of their inherent or acquired characteristics and to assess their mental and physical states. The most common features utilized are the time intervals that the keys remain pressed and the time intervals that are required to use two consecutive keys. This paper examines which of these features are the most important and how utilization of these features can lead to better classification results. To achieve this, an existing dataset consisting of 387 logfiles is used, five classifiers are exploited and users are classified by gender and age. The results, while demonstrating the application of these two characteristics jointly on classifiers with high accuracy, answer the question of which keystroke dynamics features are more appropriate for classification with common classifiers.

Topics & Concepts

Keystroke dynamicsKeystroke loggingComputer scienceArtificial intelligenceMachine learningAttributionData miningComputer securityPsychologySocial psychologyPasswordS/KEYUser Authentication and Security SystemsInnovative Human-Technology InteractionTechnology Use by Older Adults