Literature DB >> 26493860

Towards an effective cross-task mental workload recognition model using electroencephalography based on feature selection and support vector machine regression.

Yufeng Ke1, Hongzhi Qi2, Lixin Zhang1, Shanguang Chen3, Xuejun Jiao3, Peng Zhou1, Xin Zhao1, Baikun Wan1, Dong Ming4.   

Abstract

Electroencephalographic (EEG) has been believed to be a potential psychophysiological measure of mental workload. There however remain a number of challenges in building a generalized mental workload recognition model, one of which includes the inability of an EEG-based workload classifier trained on a specific task to handle other tasks. The primary goal of the present study was to examine the possibility of addressing this challenge using feature selection and regression model. Support vector machine classifier and regression models were examined under within-task conditions (trained and tested on the same task) and cross-task conditions (trained on one task and tested on another task) for well-trained verbal and spatial n-back tasks. A specifically designed cross-task recursive feature elimination (RFE) based feature selection was used to handle the possible causes responsible for the deterioration of the performance of cross-task regression model. The within-task classification and regression performed fairly well. Cross-task classification and regression performance, however, deteriorated to unacceptable levels (around chance level). Trained and tested with the most robust feature subset selected by cross-task RFE, the performance of cross-task regression was significantly improved, and there were no significant changes in the performance of within-task regression. It can be inferred that workload-related features can be picked out from those which have been contaminated using RFE, and regression models rather than classifiers may be a wiser choice for cross-task conditions. These encouraging results suggest that the cross-task workload recognition model built in this study is much more generalizable across task when compared to the model built in traditional way.
Copyright © 2015 Elsevier B.V. All rights reserved.

Keywords:  Cross-task; Electroencephalography; Mental workload; Recursive feature elimination; Support vector machine

Mesh:

Year:  2015        PMID: 26493860     DOI: 10.1016/j.ijpsycho.2015.10.004

Source DB:  PubMed          Journal:  Int J Psychophysiol        ISSN: 0167-8760            Impact factor:   2.997


  5 in total

1.  Recognition of cognitive load with a stacking network ensemble of denoising autoencoders and abstracted neurophysiological features.

Authors:  Zixuan Cao; Zhong Yin; Jianhua Zhang
Journal:  Cogn Neurodyn       Date:  2020-10-07       Impact factor: 3.473

2.  Adaptive Neuro-Fuzzy Fusion of Multi-Sensor Data for Monitoring a Pilot's Workload Condition.

Authors:  Xia Zhang; Youchao Sun; Zhifan Qiu; Junping Bao; Yanjun Zhang
Journal:  Sensors (Basel)       Date:  2019-08-20       Impact factor: 3.576

3.  Sensor Networks for Aerospace Human-Machine Systems.

Authors:  Nichakorn Pongsakornsathien; Yixiang Lim; Alessandro Gardi; Samuel Hilton; Lars Planke; Roberto Sabatini; Trevor Kistan; Neta Ezer
Journal:  Sensors (Basel)       Date:  2019-08-08       Impact factor: 3.576

4.  Evaluation of a New Lightweight EEG Technology for Translational Applications of Passive Brain-Computer Interfaces.

Authors:  Nicolina Sciaraffa; Gianluca Di Flumeri; Daniele Germano; Andrea Giorgi; Antonio Di Florio; Gianluca Borghini; Alessia Vozzi; Vincenzo Ronca; Fabio Babiloni; Pietro Aricò
Journal:  Front Hum Neurosci       Date:  2022-07-14       Impact factor: 3.473

5.  Feature Weight Driven Interactive Mutual Information Modeling for Heterogeneous Bio-Signal Fusion to Estimate Mental Workload.

Authors:  Pengbo Zhang; Xue Wang; Junfeng Chen; Wei You
Journal:  Sensors (Basel)       Date:  2017-10-12       Impact factor: 3.576

  5 in total

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