PENGELOMPOKKAN HASIL BELAJAR SISWA SDN 3 ARDIREJO DENGAN METODE CLUSTERING K-MEANS
DOI:
https://doi.org/10.69714/t57xvh88Keywords:
Grouping of learning outcomes, K-Means, clustering, educational data analysis, SDN 3 ArdirejoAbstract
Grouping student learning outcomes is a strategic step to improve the quality of learning by understanding student achievement patterns in more depth. This study aims to analyze student learning outcomes at SDN 3 Ardirejo by applying the K-Means clustering method, which is designed to group data based on similarities in academic value characteristics from various subjects during one semester. The clustering results show the effectiveness of this algorithm in dividing students into high, medium, and low achievement clusters, making it easier for teachers to design adaptive learning strategies that suit the needs of each group. In addition, the information generated provides valuable insights for planning intervention programs, such as remedial learning for low-achieving students or enrichment materials for high-achieving students. This study contributes to a more systematic management of educational data at the elementary school level and is expected to be a reference for more effective decision-making, both at the school level and by educational stakeholders.
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