TY - JOUR T1 - Prediction of Student’s Academic Performance using k-Means Clustering and Multiple Linear Regressions AU - Tinuke Omolewa, Oladele AU - Roseline Oluwaseun, Ogundokun AU - Adekanmi Adeyinka, Adegun AU - Taye Oladele, Aro JO - Journal of Engineering and Applied Sciences VL - 14 IS - 22 SP - 8254 EP - 8260 PY - 2019 DA - 2001/08/19 SN - 1816-949x DO - jeasci.2019.8254.8260 UR - https://makhillpublications.co/view-article.php?doi=jeasci.2019.8254.8260 KW - academic performance KW -academic performance KW -multiple linear regression KW -cluster KW -Data mining KW -k-means AB - In today’s educational system, performances of students are mainly based on tests, assignments, attendance, quizzes and final examination. It is at the end of this exercise that a minimum mark is determined on which promotion will be based. There is need to identify factors that lead to a student’s success or failure. This will allow the teacher to provide appropriate counselling and focus more on such factors. Hence, a model for forecasting student’s performance academically is of a pronounced significance, therefore, data mining techniques in classifying and forecasting the academic performance of students was put into application in this research study. k-means clustering and Multiple Linear Regression (MLR) were used for assessing student’s performance. The results showed that student’s test scores, quiz and assignment were the major factors that could be used in predicting academic performance of students. Also, two clusters were derived with the use of elbow method to group all the students into clusters. ER -