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Related Concept Videos

Surveys02:16

Surveys

Often, psychologists develop surveys as a means of gathering data. Surveys are lists of questions to be answered by research participants, and can be delivered as paper-and-pencil questionnaires, administered electronically, or conducted verbally. Generally, the survey itself can be completed in a short time, and the ease of administering a survey makes it easy to collect data from a large number of people.

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Detecting Burnout Among Undergraduate Computing Students with Supervised Machine Learning.

Eldar Yeskuatov1, Lee Kien Foo1, Sook-Ling Chua1

  • 1Faculty of Computing and Informatics, Multimedia University, Persiaran Multimedia, Cyberjaya 63100, Malaysia.

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Summary
This summary is machine-generated.

Machine learning can detect academic burnout using university records, showing promise for identifying exhaustion and cynicism. This approach offers a survey-free method for early intervention in student well-being.

Keywords:
academic burnoutburnout detectionmachine learningstudent mental healthwell-being

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Area of Science:

  • Educational Psychology
  • Computer Science
  • Data Science

Background:

  • Academic burnout negatively affects students' cognitive and psychological health, potentially leading to behavioral issues.
  • Early detection of student burnout is vital for institutions to provide support and interventions.
  • Current survey methods for burnout detection face challenges like response bias and administrative burden.

Purpose of the Study:

  • To explore the feasibility of using machine learning models trained on university administrative data for detecting academic burnout.
  • To develop and evaluate models for identifying three dimensions of burnout: exhaustion, cynicism, and low professional efficacy.
  • To assess the potential of a survey-free approach for unobtrusive student burnout detection.

Main Methods:

  • Developed machine learning models to detect exhaustion, cynicism, and low professional efficacy.
  • Utilized five algorithms: logistic regression, support vector machine, naive Bayes, decision tree, and extreme gradient boosting.
  • Engineered features exclusively from administrative university records, avoiding psychological surveys.

Main Results:

  • Model performance varied across burnout dimensions, with exhaustion detection yielding the highest results.
  • Logistic regression achieved an F1 score of 68.4% for exhaustion detection.
  • Cynicism detection showed moderate performance, while professional efficacy detection had the lowest performance.

Conclusions:

  • Automated detection of academic burnout signs, particularly exhaustion and cynicism, is feasible using passively collected university records.
  • The study highlights limitations in capturing psychological constructs solely through administrative data.
  • Findings provide a basis for future research into unobtrusive methods for student burnout detection.