C. So, Pui-ling Chan, S. C. Wong, A. K. Wong, Ho-yin Tsang, Henry C. B. Chan
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Some pattern recognitions for a recommendation framework for higher education students’ generic competence development using machine learning
The project presented in this paper aims to formulate a recommendation framework that consolidates the higher education students’ particulars such as their academic background, current study and student activity records, their attended higher education institution’s expectations of graduate attributes and self-assessment of their own generic competencies. The gap between the higher education students’ generic competence development and their current statuses such as their academic performance and their student activity involvement was incorporated into the framework to come up with a recommendation for the student activities that lead to their generic competence development. For the formulation of the recommendation framework, the data mining tool Orange with some programming in Python and machine learning models was applied on 14,556 students’ activity and academic records in the case higher education institution to find out three major types of patterns between the students’ participation of the student activities and (1) their academic performance change, (2) their programmes of studies, and (3) their English results in the public examination. These findings are also discussed in this paper.
期刊介绍:
JOTSE is an international Journal aiming at publishing interdisciplinary research within the university education framework and it is especially focused on the fields of Technology and Science. JOTSE serves as an international forum of reference for Engineering education. Teaching innovation oriented, the journal will be issued twice per year (every 6 months) and will include original works, research and projects dealing with the new learning methodologies and new learning supporting tools related to the wide range of disciplines the Engineering studies and profession involve. In addition, JOTSE will also issue special numbers on more technological themes from the different areas of general interest in the industrial world, which may be used as practical cases in classroom tuition and practice. Thereby, getting the working world reality closer to the learning at University. Among other areas of interest, our Journal will be focused on: 1. Education 2.General Science (Physics, Chemistry, Maths,…) 3.Telecommunications 4.Electricity and Electronics 5.Industrial Computing (Digital, Analogic, Robotics, Ergonomics) 6.Aerospatial (aircraft design and building, engines, materials) 7. Automotive (automotive materials, automobile emissions).