TypeState: Detecting Cognitive Load from Privacy-Preserving Keystroke Micro-Rhythms, A Pilot Study
Description
This paper presents TypeState, a privacy-preserving framework for detecting cognitive load from keystroke micro-rhythms using machine learning.
The system operates on timing-derived features (flight time and rolling variance) without storing or analyzing text content, enabling privacy-preserving inference. A bidirectional LSTM model is trained on keystroke sequences and compared with conventional baselines such as Random Forest and SVM.
Experiments are conducted on a pilot dataset collected from student typing sessions under relaxed and time-pressured conditions. Results indicate that sequential modeling improves classification performance over static approaches, while preliminary analysis suggests that stress may correspond to reduced variance in typing rhythms.
This is a preliminary pilot study with a limited dataset and simplified experimental design. Results require validation through larger, controlled studies with subject-wise evaluation and validated stress measures.
Files
TypeState_paper.pdf
Files
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Additional details
Software
- Repository URL
- https://github.com/1mystic/typestate-data/