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CHI
2011
ACM

Identifying emotional states using keystroke dynamics

13 years 2 months ago
Identifying emotional states using keystroke dynamics
The ability to recognize emotions is an important part of building intelligent computers. Emotionally-aware systems would have a rich context from which to make appropriate decisions about how to interact with the user or adapt their system response. There are two main problems with current system approaches for identifying emotions that limit their applicability: they can be invasive and can require costly equipment. Our solution is to determine user emotion by analyzing the rhythm of their typing patterns on a standard keyboard. We conducted a field study where we collected participants’ keystrokes and their emotional states via selfreports. From this data, we extracted keystroke features, and created classifiers for 15 emotional states. Our top results include 2-level classifiers for confidence, hesitance, nervousness, relaxation, sadness, and tiredness with accuracies ranging from 77 to 88%. In addition, we show promise for anger and excitement, with accuracies of 84%. Author Ke...
Clayton Epp, Michael Lippold, Regan L. Mandryk
Added 25 Aug 2011
Updated 25 Aug 2011
Type Journal
Year 2011
Where CHI
Authors Clayton Epp, Michael Lippold, Regan L. Mandryk
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