Analysis of support vector machine and random forest models for classification of the impact of technostress in covid and post-covid era

Authors

  • Gabriel James Department of Computing, Topfaith University, Nigeria
  • Ime Umoren Department of Cyber Security, Federal University of Technology, Ikot Abasi, Nigeria
  • Anietie Ekong Department of Computer Science, Akwa Ibom State University, Nigeria
  • Saviour Inyang Department of Computer Science, Akwa Ibom State University, Nigeria
  • Oscar Aloysius Department of Computer and Robotic Education, University of Uyo, Uyo, Nigeria

Keywords:

COVID-19 era, Technostress, Machine Learning Models, Deep Learning

Abstract

This study addresses the growing concern of technostress, a condition caused by the overwhelming use of digital technologies, exacerbated by the COVID-19 pandemic. The researchers developed a predictive model using machine learning algorithms, Random Forest (RF) and Support Vector Machine (SVM), to assess and manage technostress levels. The model considers factors such as age, gender, technology usage hours, and technological experiences to classify stress levels into high, moderate, and low categories. The study collected data through a questionnaire administered to knowledgeable respondents, using a non-probabilistic sampling approach. The results showed that both RF and SVM algorithms achieved high accuracy in classifying technostress, with SVM performing slightly better (94.5% vs 84.50%). The model’s effectiveness in predicting stress levels for users with varying degrees of stress is a significant contribution to the field. The research also developed an interactive user interface to facilitate user engagement with the model, promoting stress management and well-being in a technology-driven society. The study’s findings provide valuable insights into the challenges posed by technostress and offer a solution for mitigating its effects. The use of machine learning algorithms to classify gender based on the dataset demonstrates the model’s potential applications in various areas. Overall, this study demonstrates the importance of addressing technostress in the digital age and provides a valuable tool for managing stress levels. The development of predictive models like this one can help individuals and organizations mitigate the negative impacts of technostress, promoting a healthier and more sustainable relationship with technology.

Dimensions

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Published

2024-07-14

How to Cite

Analysis of support vector machine and random forest models for classification of the impact of technostress in covid and post-covid era. (2024). Journal of the Nigerian Society of Physical Sciences, 6(3), 2102. https://doi.org/10.46481/jnsps.2024.2102

Issue

Section

Computer Science

How to Cite

Analysis of support vector machine and random forest models for classification of the impact of technostress in covid and post-covid era. (2024). Journal of the Nigerian Society of Physical Sciences, 6(3), 2102. https://doi.org/10.46481/jnsps.2024.2102