Literature DB >> 33572232

Interpretable Machine Learning Models for Three-Way Classification of Cognitive Workload Levels for Eye-Tracking Features.

Monika Kaczorowska1, Małgorzata Plechawska-Wójcik1, Mikhail Tokovarov1.   

Abstract

The paper is focussed on the assessment of cognitive workload level using selected machine learning models. In the study, eye-tracking data were gathered from 29 healthy volunteers during examination with three versions of the computerised version of the digit symbol substitution test (DSST). Understanding cognitive workload is of great importance in analysing human mental fatigue and the performance of intellectual tasks. It is also essential in the context of explanation of the brain cognitive process. Eight three-class classification machine learning models were constructed and analysed. Furthermore, the technique of interpretable machine learning model was applied to obtain the measures of feature importance and its contribution to the brain cognitive functions. The measures allowed improving the quality of classification, simultaneously lowering the number of applied features to six or eight, depending on the model. Moreover, the applied method of explainable machine learning provided valuable insights into understanding the process accompanying various levels of cognitive workload. The main classification performance metrics, such as F1, recall, precision, accuracy, and the area under the Receiver operating characteristic curve (ROC AUC) were used in order to assess the quality of classification quantitatively. The best result obtained on the complete feature set was as high as 0.95 (F1); however, feature importance interpretation allowed increasing the result up to 0.97 with only seven of 20 features applied.

Entities:  

Keywords:  cognitive workload; explainable machine learning; eyetracking signal; mutliclass classification

Year:  2021        PMID: 33572232      PMCID: PMC7914927          DOI: 10.3390/brainsci11020210

Source DB:  PubMed          Journal:  Brain Sci        ISSN: 2076-3425


  32 in total

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Authors:  Pega Zarjam; Julien Epps; Fang Chen; Nigel H Lovell
Journal:  Comput Biol Med       Date:  2013-09-07       Impact factor: 4.589

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Journal:  Psychol Bull       Date:  1998-11       Impact factor: 17.737

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Authors:  Ziheng Wang; Ryan M Hope; Zuoguan Wang; Qiang Ji; Wayne D Gray
Journal:  Neuroimage       Date:  2011-08-16       Impact factor: 6.556

4.  Classification of visual and linguistic tasks using eye-movement features.

Authors:  Moreno I Coco; Frank Keller
Journal:  J Vis       Date:  2014-03-07       Impact factor: 2.240

5.  The effects of interior design on wellness - Eye tracking analysis in determining emotional experience of architectural space. A survey on a group of volunteers from the Lublin Region, Eastern Poland.

Authors:  Wioletta Tuszyńska-Bogucka; Bartłomiej Kwiatkowski; Magdalena Chmielewska; Mariusz Dzieńkowski; Wojciech Kocki; Jarosław Pełka; Natalia Przesmycka; Jacek Bogucki; Dariusz Galkowski
Journal:  Ann Agric Environ Med       Date:  2019-04-17       Impact factor: 1.447

6.  Exploring the fatigue affecting electroencephalography based functional brain networks during real driving in young males.

Authors:  Jichi Chen; Hong Wang; Qiaoxiu Wang; Chengcheng Hua
Journal:  Neuropsychologia       Date:  2019-04-14       Impact factor: 3.139

7.  Improving the performance of an EEG-based motor imagery brain computer interface using task evoked changes in pupil diameter.

Authors:  David Rozado; Andreas Duenser; Ben Howell
Journal:  PLoS One       Date:  2015-03-27       Impact factor: 3.240

8.  Cross-Participant EEG-Based Assessment of Cognitive Workload Using Multi-Path Convolutional Recurrent Neural Networks.

Authors:  Ryan Hefron; Brett Borghetti; Christine Schubert Kabban; James Christensen; Justin Estepp
Journal:  Sensors (Basel)       Date:  2018-04-26       Impact factor: 3.576

9.  Theories and Methods for Labeling Cognitive Workload: Classification and Transfer Learning.

Authors:  Ryan McKendrick; Bradley Feest; Amanda Harwood; Brian Falcone
Journal:  Front Hum Neurosci       Date:  2019-09-11       Impact factor: 3.169

10.  Predicting cognitive state from eye movements.

Authors:  John M Henderson; Svetlana V Shinkareva; Jing Wang; Steven G Luke; Jenn Olejarczyk
Journal:  PLoS One       Date:  2013-05-29       Impact factor: 3.240

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