Predicting Office Workers’ Productivity: A Machine Learning Approach Integrating Physiological, Behavioral, and Psychological Indicators

Author:

Awada Mohamad1ORCID,Becerik-Gerber Burcin1,Lucas Gale2,Roll Shawn C.3ORCID

Affiliation:

1. Department of Civil and Environmental Engineering, University of Southern California, Los Angeles, CA 90089, USA

2. USC Institute for Creative Technologies, University of Southern California, Los Angeles, CA 90089, USA

3. Chan Division of Occupational Science and Occupational Therapy, University of Southern California, Los Angeles, CA 90089, USA

Abstract

This research pioneers the application of a machine learning framework to predict the perceived productivity of office workers using physiological, behavioral, and psychological features. Two approaches were compared: the baseline model, predicting productivity based on physiological and behavioral characteristics, and the extended model, incorporating predictions of psychological states such as stress, eustress, distress, and mood. Various machine learning models were utilized and compared to assess their predictive accuracy for psychological states and productivity, with XGBoost emerging as the top performer. The extended model outperformed the baseline model, achieving an R2 of 0.60 and a lower MAE of 10.52, compared to the baseline model’s R2 of 0.48 and MAE of 16.62. The extended model’s feature importance analysis revealed valuable insights into the key predictors of productivity, shedding light on the role of psychological states in the prediction process. Notably, mood and eustress emerged as significant predictors of productivity. Physiological and behavioral features, including skin temperature, electrodermal activity, facial movements, and wrist acceleration, were also identified. Lastly, a comparative analysis revealed that wearable devices (Empatica E4 and H10 Polar) outperformed workstation addons (Kinect camera and computer-usage monitoring application) in predicting productivity, emphasizing the potential utility of wearable devices as an independent tool for assessment of productivity. Implementing the model within smart workstations allows for adaptable environments that boost productivity and overall well-being among office workers.

Funder

National Science Foundation

Army Research Office

Pilot Project Research Training Program of the Southern California NIOSH Education and Research Center

Centers for Disease Control and Prevention

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference50 articles.

1. U.S. Bureau of Labor Statistics (2023, August 20). Occupational Employment and Wages. May 2020, Available online: https://www.bls.gov/oes/current/oes430000.htm#nat.

2. Productivity Driven by Job Satisfaction, Physical Work Environment, Management Support and Job Autonomy;Shobe;Bus. Econ. J.,2018

3. Diversity of tasks and information technologies used by office workers at and away from work;Ciccarelli;Ergonomics,2011

4. Measurements of workplace productivity in the office context;Bortoluzzi;J. Corp. Real Estate,2018

5. Kyamakya, K., Al-Machot, F., Mosa, A.H., Bouchachia, H., Chedjou, J.C., and Bagula, A. (2021). Emotion and Stress Recognition Related Sensors and Machine Learning Technologies. Sensors, 21.

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