Please use this identifier to cite or link to this item: http://repository.kln.ac.lk/handle/123456789/25430
Title: Machine Learning Approach to Predict Mental Distress of IT Workforce in Remote
Authors: Gamage, Sanduni Nilushika
Asanka, P. P. G. Dinesh
Keywords: classification, external features, IT employees, Machine Learning, mental distress
Issue Date: 2022
Publisher: Department of Industrial Management, Faculty of Science, University of Kelaniya Sri Lanka
Citation: Gamage Sanduni Nilushika; Asanka P. P. G. Dinesh (2022), Machine Learning Approach to Predict Mental Distress of IT Workforce in Remote, International Research Conference on Smart Computing and Systems Engineering (SCSE 2022), Department of Industrial Management, Faculty of Science, University of Kelaniya Sri Lanka. 211-216.
Abstract: When considering online workers, due to the emergence of the coronavirus pandemic prevailing in the world, employees have been restricted to work remotely for a prolonged period. All the working arrangements are now based at home than before. Since this has been novel to society, the impact caused by this crisis on people is unknown in the short or long term. Since various factors can cause mental distress among online workers, periodic screening for mental distresses such as anxiety, depression, and stress is necessary for health and well-being. The causes of mental distress are multifactorial. They include socio-demographic, biological, economic, environmental, occupational, and psychological aspects. This paper proposes a concept of a screening system to predict mental distress given the external features associated with individuals, using supervised machine learning approaches and identifying the employees prone to higher risk and referring them early to professional assistance. The study was conducted concerning the circumstances in a pandemic era considering COVID-19 as the case study. The study was done with remote IT workers in Sri Lanka who work as a part of a software development team. 481 professionals participated in the study and were selected based on selection criteria and appropriate encoding techniques were utilized to encode categorical variables where most important 25 features were detected among 60 features using feature selection. Finally, classification techniques such as Random Forest, SVM, XGBoost, CatBoost, decision tree, and Naïve Bayes were used for modeling by which the CatBoost algorithm in overall measures outperformed other algorithms with a predictive accuracy of 97.1%, precision of 97.4%, recall of 99.7%, and f1 measure is 98.5%.
URI: http://repository.kln.ac.lk/handle/123456789/25430
Appears in Collections:Smart Computing and Systems Engineering - 2022 (SCSE 2022)

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