Performance Assessment of University Lecturers: A Data Mining Approach

Milkhatun Milkhatun(1*), Alfi Ari Fakhrur Rizal(2), Ni Wayan Wiwin Asthiningsih(3), Asslia Johar Latipah(4),

(1) Department of Nurse Universitas Muhammadiyah Kalimantan Timur
(2) Department of Nurse Universitas Muhammadiyah Kalimantan Timur
(3) Department of Nurse Universitas Muhammadiyah Kalimantan Timur
(4) Department of Informatics Universitas Muhammadiyah Kalimantan Timur
(*) Corresponding Author
DOI: https://doi.org/10.23917/khif.v6i2.9069

Abstract

A lecturer with a good performance has a positive impact on the quality of teaching and learning. The said quality  includes the delivery of teaching materials, learning methods, and ultimately the academic results of students. Performance of lecturers contributes significantly to the quality of research and community service which in turn improves the quality of teaching materials. It is desirable, therefore, to have a method to measure the performance of lecturers in carrying out the Tri Dharma (or the three responsibility) activities, which consist of teaching and learning process, research, and community service activities, including publications at both national and international level. This study seeks to measure the performance of lecturers and cluster them into three categories, namely "satisfactory", "good", and "poor". Data were taken from academic works of nursing study program lecturers in conducting academic activities. Clustering process is carried out using two machine learning approaches, which is K-Means and K-Medoids algorithms. Evaluation of the clustering results suggests that K-Medoids algorithm performs better compared to using K-Means. DBI score for clustering techniques using K-Means is -0.417 while the score for K-Medoids is -0.652. The significant difference in the score shows that K-Medoids algorithm works better in determining the performance of lecturers in carrying out Tri Dharma activities.

Keywords

Data mining; K-Medoids algorithm; Lecturer performance

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