Literature DB >> 34776600

Using Smartphone App Use and Lagged-Ensemble Machine Learning for the Prediction of Work Fatigue and Boredom.

Damien Lekkas1,2, George D Price1,2, Nicholas C Jacobson1,3,4,2.   

Abstract

INTRO: As smartphone usage becomes increasingly prevalent in the workplace, the physical and psychological implications of this behavior warrant consideration. Recent research has investigated associations between workplace smartphone use and fatigue and boredom, yet findings are not conclusive.
METHODS: To build off recent efforts, we applied an ensemble machine learning model on a previously published dataset of N = 83 graduate students in the Netherlands to predict work boredom and fatigue from passively collected smartphone app use information. Using time-based feature engineering and lagged variations of the data to train, validate, and test idiographic models, we evaluated the efficacy of a lagged-ensemble predictive paradigm on sparse temporal data. Moreover, we probed the relative importance of both derived app use variables and lags within this predictive framework.
RESULTS: The ability to predict fatigue and boredom trajectories from app use information was heterogeneous and highly person-specific. Idiographic modeling reflected moderate to high correlative capacity (r > 0.4) in 47% of participants for fatigue and 24% for boredom, with better overall performance in the fatigue prediction task. App use relating to duration, communication, and patterns of use frequency were among the most important features driving predictions across lags, with longer lags contributing more heavily to final ensemble predictions compared with shorter ones.
CONCLUSION: A lag- specific ensemble predictive paradigm is a promising approach to leveraging high-dimensional app use behavioral data for the prediction of work fatigue and boredom. Future research will benefit from evaluating associations on densely collected data across longer time scales.

Entities:  

Keywords:  EMA; app use; boredom; digital phenotyping; fatigue; lag; machine learning; passive sensing

Year:  2021        PMID: 34776600      PMCID: PMC8589273          DOI: 10.1016/j.chb.2021.107029

Source DB:  PubMed          Journal:  Comput Human Behav        ISSN: 0747-5632


  31 in total

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Journal:  Am Psychol       Date:  2003-01

2.  Proneness to Boredom and Risk Behaviors During Adolescents' Free Time.

Authors:  Roberta Biolcati; Giacomo Mancini; Elena Trombini
Journal:  Psychol Rep       Date:  2017-08-04

3.  Association of mobile phone radiation with fatigue, headache, dizziness, tension and sleep disturbance in Saudi population.

Authors:  Thamir Al-Khlaiwi; Sultan A Meo
Journal:  Saudi Med J       Date:  2004-06       Impact factor: 1.484

4.  "How fatigued do you currently feel?" Convergent and discriminant validity of a single-item fatigue measure.

Authors:  Madelon L M van Hooff; Sabine A E Geurts; Michiel A J Kompier; Toon W Taris
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5.  Biomarkers panels can predict fatigue, depression and pain in persons living with HIV: A pilot study.

Authors:  Julie A Zuñiga; Michelle L Harrison; Ashley Henneghan; Alexandra A García; Shelli Kesler
Journal:  Appl Nurs Res       Date:  2019-12-26       Impact factor: 2.257

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Authors:  Maarten A S Boksem; Theo F Meijman; Monicque M Lorist
Journal:  Biol Psychol       Date:  2005-11-09       Impact factor: 3.251

7.  Changes in millennial adolescent mental health and health-related behaviours over 10 years: a population cohort comparison study.

Authors:  Praveetha Patalay; Suzanne H Gage
Journal:  Int J Epidemiol       Date:  2019-10-01       Impact factor: 7.196

8.  Mental fatigue caused by prolonged cognitive load associated with sympathetic hyperactivity.

Authors:  Kei Mizuno; Masaaki Tanaka; Kouzi Yamaguti; Osami Kajimoto; Hirohiko Kuratsune; Yasuyoshi Watanabe
Journal:  Behav Brain Funct       Date:  2011-05-23       Impact factor: 3.759

9.  Passive Sensing of Prediction of Moment-To-Moment Depressed Mood among Undergraduates with Clinical Levels of Depression Sample Using Smartphones.

Authors:  Nicholas C Jacobson; Yeon Joo Chung
Journal:  Sensors (Basel)       Date:  2020-06-24       Impact factor: 3.576

10.  Fatigue, boredom and objectively measured smartphone use at work.

Authors:  Jonas Dora; Madelon van Hooff; Sabine Geurts; Michiel Kompier; Erik Bijleveld
Journal:  R Soc Open Sci       Date:  2021-07-07       Impact factor: 2.963

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