Work place: Universitas Sembilanbelas November Kolaka, Kolaka, Indonesia
E-mail: mns.usn21@gmail.com
Website: https://orcid.org/0000-0001-6507-9096
Research Interests:
Biography
Muh. Nurtanzis Sutoyo, S.Kom.,M.Cs.,IPP is a permanent lecturer in the Information Systems Program at the Faculty of Information Technology Universitas Sembilanbelas November Kolaka, Southeast Sulawesi. They are the eldest of three siblings. They completed their Bachelor's program (S1) at STIMIK Bina Bangsa Kendari (2008), finished their Master's program (S2) at Gadjah Mada University in the Computer Science Program with a concentration in Intelligent Systems (2015), and completed the Professional Engineer Education at Hasanuddin University (2022).
By Muh. Nurtanzis Sutoyo Alders Paliling
DOI: https://doi.org/10.5815/ijeme.2025.04.02, Pub. Date: 8 Aug. 2025
This study explores the integration of two methods, namely K-Means and k-NN. K-means is used to identify categories of learning outcome data, while k-NN is used to predict students' learning outcomes into relevant categories. Through the calculation of the Elbow method, it was established that the optimal number of clusters for grouping is three. The learning outcome data, which include Arithmetic and Statistics scores, are processed to produce a mapping that differentiates students into three categories: Adequate, Moderate, and Good. In the 12th iteration, the clustering results using K-Means achieved convergence, with 64 students in the Adequate category (C1), 60 students in the Moderate category (C2), and 59 students in the Good category (C3). This indicates that the students in each group are evenly distributed based on their mathematical and statistical abilities. The prediction results using k-NN for a student with an Arithmetic score of 85 a Statistics score of 75, and a k-value of 61, found that 7 data fell into Category 1 (Adequate), 3 data into Category 2 (Moderate), and dominant 51 data in Category 3 (Good). Thus, the prediction results are placed in Category 3, indicating a 'Good' rating in their academic performance. By using data mining techniques to enhance understanding of student learning outcomes, this study provides a significant contribution to the field of education. It demonstrates substantial progress toward a data-driven learning approach that can be tailored to specific needs and improve student learning outcomes.
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