Author
Listed:
- Oladipo Sunday
(Department of Computer Science, Babcock University, Ilishan-Remo, Ogun State, Nigeria.)
- Onuiri Ernest
(Department of Computer Science, Babcock University, Ilishan-Remo, Ogun State, Nigeria.)
- Ayankoya Folasade
(Department of Computer Science, Babcock University, Ilishan-Remo, Ogun State, Nigeria.)
- Ogu Emmanuel
(Department of Information Technology, Babcock University, Ilishan-Remo, Ogun State, Nigeria.)
Abstract
The widespread use of technology has led to an increase in technostress which is a phenomenon where individuals experience stress and anxiety due to their interactions with technology. As social media platforms become increasingly integral to daily life, detecting technostress from online interactions has become a pressing concern and an avenue to enrich the research in the area of detecting technostress. This study evaluates the performance of selected base models on X (Twitter data). Also, the study investigated the effectiveness of a feature extraction technique for the improvement of the model performance through data preprocessing. The study made use of the dataset of X posts (Sentiment140) obtained from the Standford University. The extracted features were used to train and evaluate four base models: Random Forest (RF), Extreme Gradient Boosting (XGB), Gradient Boosting (GB), and Light Gradient Boosting Machine (LGBM). The performance of each model was evaluated based on accuracy, precision, recall, F1-score and Kappa statistics. The RF model outperformed other base models with accuracy, precision, recall, f1-score, and Kappa score values of 88.03%, 85.98%, 85.68%, 85.79% and 79.81% respectively. The results highlight the importance of preprocessing and feature extraction techniques in improving model performance; contributes to the development of more effective technostress detection systems and provide insights into the application of machine learning algorithms for analysing online interactions.
Suggested Citation
Oladipo Sunday & Onuiri Ernest & Ayankoya Folasade & Ogu Emmanuel, 2025.
"Evaluating the Efficacy of Base Models for Technostress Detection,"
International Journal of Research and Scientific Innovation, International Journal of Research and Scientific Innovation (IJRSI), vol. 12(3), pages 598-608, March.
Handle:
RePEc:bjc:journl:v:12:y:2025:i:3:p:598-608
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