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Machine learning-based classification of viewing behavior using a wide range of statistical oculomotor features

Authors :
Kootstra, Timo
Teuwen, Jonas
Goudsmit, Jeroen
Nijboer, Tanja
Dodd, Michael
Van der Stigchel, Stefan
Leerstoel Stigchel
LS Logica en grondslagen v.d. wiskunde
Helmholtz Institute
Experimental Psychology (onderzoeksprogramma PF)
Leerstoel Postma
Afd Psychologische functieleer
VU SBE Executive Education
Leerstoel Stigchel
LS Logica en grondslagen v.d. wiskunde
Helmholtz Institute
Experimental Psychology (onderzoeksprogramma PF)
Leerstoel Postma
Afd Psychologische functieleer
Source :
Journal of Vision, 20(9), 1-15. Association for Research in Vision and Ophthalmology Inc., Kootstra, T, Teuwen, J, Goudsmit, J, Nijboer, T, Dodd, M & Van der Stigchel, S 2020, ' Machine learning-based classification of viewing behavior using a wide range of statistical oculomotor features ', Journal of Vision, vol. 20, no. 9, pp. 1-15 . https://doi.org/10.1167/jov.20.9.1, Journal of Vision, 20, Journal of Vision, 20, 9, Journal of Vision, Journal of Vision, 20(9). The Association for Research in Vision and Ophthalmology
Publication Year :
2020
Publisher :
Association for Research in Vision and Ophthalmology Inc., 2020.

Abstract

Contains fulltext : 225885.pdf (Publisher’s version ) (Open Access) Since the seminal work of Yarbus, multiple studies have demonstrated the influence of task-set on oculomotor behavior and the current cognitive state. In more recent years, this field of research has expanded by evaluating the costs of abruptly switching between such different tasks. At the same time, the field of classifying oculomotor behavior has been moving toward more advanced, data-driven methods of decoding data. For the current study, we used a large dataset compiled over multiple experiments and implemented separate state-of-the-art machine learning methods for decoding both cognitive state and task-switching. We found that, by extracting a wide range of oculomotor features, we were able to implement robust classifier models for decoding both cognitive state and task-switching. Our decoding performance highlights the feasibility of this approach, even invariant of image statistics. Additionally, we present a feature ranking for both models, indicating the relative magnitude of different oculomotor features for both classifiers. These rankings indicate a separate set of important predictors for decoding each task, respectively. Finally, we discuss the implications of the current approach related to interpreting the decoding results.

Details

Language :
English
ISSN :
15347362
Volume :
20
Issue :
9
Database :
OpenAIRE
Journal :
Journal of Vision
Accession number :
edsair.doi.dedup.....377be718f6a9fd58b1814d4c94b22478
Full Text :
https://doi.org/10.1167/jov.20.9.1