Work place: Department of ICT Education, University of Education, Winneba, Winneba, Ghana
E-mail: dkdake@uew.edu.gh
Website:
Research Interests:
Biography
Delali Kwasi Dake is an Associate Professor of Computing and Information Technology at the University of Education, Winneba, Ghana and currently the Head, Department of ICT Education. He holds a PhD in Computer Engineering from the Kwame Nkrumah University of Science & Technology, Kumasi, Ghana. His research focuses on educational data mining, artificial intelligence, reinforcement learning, intelligent systems, software-defined networks, and blockchain technology.
Prof. Dake is currently an external examiner for KNUST, BlueCrest, and Heritage Christian University. He is an academic reviewer for highly indexed journals, including Signal, Image and Video Processing – Springer; Scientific Reports - Springer Nature; Journal of Network and Systems - Springer; Education and Information Technologies - Springer; Cluster Computing - Springer; Discover Computing - Springer; BMC Medical Informatics and Decision Making - Springer; Frontiers of Digital Education - Springer; BMC Oral Health, Data Science Aspect - Springer; MPDI Education Sciences - Scopus indexed; and PeerJ Computer Science - Scopus indexed.
DOI: https://doi.org/10.5815/ijmecs.2026.02.09, Pub. Date: 8 Apr. 2026
Students attending school experience stress due to a variety of factors that can originate either on campus or from home. In managing stress and other related issues, educational institutions now have counselling units that operate as centres. Moreover, several institutions have designated academic counsellors in departments to address the increasing demand for counselling services due to an expanding student population. Timely detection and proactive counselling of stress among students can help avert dropouts, health issues, and other learner behaviours that are detrimental to academic work. This study proposes two approaches to facilitate the automation of student counselling for stress management. We first implemented the K-means algorithm and formed clusters using the elbow and the Silhouette methods. The clusters formed reveal three groups of students. The stressors significantly affected one group, making it vulnerable. The stressors moderately impacted another group, while the final group experiences minimal stress. In the second part of the study, we proposed a classification model to identify the cluster group of any new student. The results of the classification show superior performance for the Decision Tree algorithm with an accuracy of 97.64%. The improvement in the efficiency of the classification algorithms was attained through feature engineering using the Chi-square method.
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