Stunting is a public health problem that impacts child growth and development, particularly during the First 1,000 Days of Life (1000 HPK). This study aims to apply the K-Means Clustering algorithm to classify stunting risk levels based on 1000 HPK data in Nagari Aia Gadang Timur. The data used include maternal and child health indicators, such as maternal nutritional status, prenatal check-up history, birth weight, exclusive breastfeeding, and child growth measurements. The K-Means algorithm was used to group the data into several clusters. The results showed that the formed clusters were able to clearly distinguish low, medium, and high stunting risk groups. The application of K-Means Clustering can facilitate early identification of stunting risk and support data-driven decision-making in planning stunting prevention and intervention programs at the nagari level.
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