- The Eurasia Proceedings of Science Technology Engineering and Mathematics
- Volume:16
- Analysis and Prediction of Students’ Academic Performance and Employability Using Data Mining Techni...
Analysis and Prediction of Students’ Academic Performance and Employability Using Data Mining Techniques: A Research Travelogue
Authors : Maria Elisa Linda Taeza CRUZ, Riah Elcullada ENCARNACION
Pages : 117-131
Doi:10.55549/epstem.1068566
View : 14 | Download : 7
Publication Date : 2021-12-31
Article Type : Research Paper
Abstract :Higher education institutions insert ignore into journalissuearticles values(HEIs); handle tons of data to analyze and generate the most relevant information. Data mining is considered a useful tool to extract knowledge to predict future educational trends in this process. Hence, such a method is significant to HEIs to understand and predict students’ employability and other critical academic elements. A comprehensive and systematic literature review was conducted to identify data mining techniques, algorithms, and the various data sets that will lead to the smart prediction and accuracy of student employability. The same method was used to determine the relationship between academic achievement and the employability of students. According to the research findings, the most frequently used data mining techniques for determining students` academic achievement and employability are Classification techniques, specifically the J48insert ignore into journalissuearticles values(C4.5); algorithm, the Naïve Bayes algorithm, and the CHAID Decision Tree algorithm. The most frequently used data sets or attributes for predicting students` academic performance and employability are their cumulative grade point average insert ignore into journalissuearticles values(CGPA);, gender, technical, communication, problem-solving, analytical, critical thinking, and decision-making skills, extracurricular activities, and age, as well as psychomotor factors such as behavior and attendance and training/internship placement. Academic performance is the primary determinant of employability. The application of data mining techniques in academia has demonstrated its value in enhancing the performance of higher education institutions insert ignore into journalissuearticles values(HEIs);. As a result, more research is urgently needed to ascertain the efficacy of the approaches, algorithms, and data sets identified as predictors of students` employability. Moreover, automated approaches should be utilized to ascertain their accuracy.Keywords : Student employability, Data mining techniques, Datasets, Prediction, Student academic performance