Gürkan Gündüz, A Mobile Touch-Based Continuous Authentication System via User-Specific Distribution Based Learning
This study presents a mobile authentication method based on modeling the distribution of touch behavior features. Instead of using summary statistics, the approach represents user interactions as probability distributions and compares them using KL divergence. A Siamese neural network is used to learn differences between users. The method is evaluated on a public dataset, showing improvements over baseline models in terms of error rates. Results suggest that distribution-based modeling can provide useful information for continuous authentication without requiring active user input.
Date: 21.08.2025 / 10:00 Place: A-212