A Comparison of Artificial Neural Networks, Logistic Regressions, and Classification Trees for Modeling Mental Workload in Real-Time

The use of eye metrics to predict the state of one's mental workload involves reliable and accurate modeling techniques. This study assessed the workload classification accuracy of three data mining techniques; artificial neural network (ANN), logistic regression, and classification tree. The results showed that the selection of model technique and the interaction between model type and time segmentation have significant effects on the ability to predict an individual's mental workload during a recall task. The ANN and classification tree both performed much better than logistic regression with 1-s incremented data. The classification tree also performed much better with data averaged over the full recall task. In addition, the transparency of the classification tree showed that pupil diameter and divergence are significantly more important predictors than fixation when modeling 1-s incremented data.

[1]  Magdalini Eirinaki Data Mining for Business Intelligence , 2008 .

[2]  Glenn F. Wilson,et al.  Real-Time Assessment of Mental Workload Using Psychophysiological Measures and Artificial Neural Networks , 2003, Hum. Factors.

[3]  Sandra P Marshall,et al.  Identifying cognitive state from eye metrics. , 2007, Aviation, space, and environmental medicine.

[4]  Alex Chaparro,et al.  Using Saccadic Intrusions to Quantify Mental Workload , 2009 .

[5]  R. Engle,et al.  Is working memory capacity task dependent , 1989 .

[6]  John Sweller,et al.  Discussion of ‘emerging topics in cognitive load research: using learner and information characteristics in the design of powerful learning environments’ , 2006 .

[7]  A S Detsky,et al.  Primer on Medical Decision Analysis: Part 2—Building a Tree , 1997, Medical decision making : an international journal of the Society for Medical Decision Making.

[8]  Scott Makeig,et al.  Eye Activity Correlates of Workload during a Visuospatial Memory Task , 2001, Hum. Factors.

[9]  Glenn F. Wilson,et al.  Performance Enhancement in an Uninhabited Air Vehicle Task Using Psychophysiologically Determined Adaptive Aiding , 2007, Hum. Factors.

[10]  J. Jolles,et al.  Pupil dilation in response preparation. , 2008, International journal of psychophysiology : official journal of the International Organization of Psychophysiology.

[11]  Richard P. Heitz,et al.  An automated version of the operation span task , 2005, Behavior research methods.