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Implementation Of Kmeans Clustering On SIPP-KLING Dashboard Applications
2018
MULTINETICS
This study focused on classifying rumah_sehat data into five categories, namely Healthy, Very Healthy, Unhealthy, Unhealthy, Very Unhealthy. The criteria that will be the input parameters for K-Means calculation are 17 criteria. The implementation of the K-Means Clustering will help in classifying healthier homes that are more filtered, based on 8969 data. Data obtained from the results of clustering k-means can help analyze what parts of a house should be handled more, or which areas have
doi:10.32722/multinetics.vol4.no.2.2018.pp.38-42
fatcat:fhk6qbyodngsdbb75wgaiq2bay