TY - JOUR AU - Asa Muna AU - Kariyam Kariyam PY - 2024/11/25 Y2 - 2025/04/03 TI - Clustering of Study Program Using of Block-Based K-Medoids JF - Jurnal Varian JA - Varian VL - 8 IS - 1 SE - Articles DO - https://doi.org/10.30812/varian.v8i1.3181 UR - https://journal.universitasbumigora.ac.id/index.php/Varian/article/view/3181 AB - The purpose of this research is to classify Study Programs based on eleven mixed data from InternalQuality Management System (QMS) indicators. This grouping can provide a clearer picture of howQMS affects the performance and quality of study programs. By understanding these clusters, universities can identify and design more effective strategies to improve the quality of education. The dataused comes from the National Accreditation Board for Higher Education (BAN-PT) and the websitedatabase, which consists of seven numerical variables: number of lecturers, percentage of doctors, percentage of professors and associate professors, student enumeration, percentage of graduates, programexperience, and availability of laboratories. Meanwhile, the categorical variable consists of four variables: National Accreditation Board of Higher Education (BAN-PT) research ranking, accreditation,international recognition, and level of community service. The clustering method used is the blockbased k-medoids (block-based KM), and multivariate analysis of variance (MANOVA). We applied theDeviation Ratio Index based on K-Medoids (DRIM) to determine the number of clusters. This researchresults that the optimal number of groups that must be formed is three. Based on MANOVA the resultsshowed that the group consisting of 12 study programs had better QMS outcomes than the other twogroups. ER -