Key Message
This paper explores disparities in family health status across provinces using cluster analysis
with the K-means approach applied to 10 family health indicator variables. Secondary data
analysis was used from the 2021 Indonesian Health Profile and statistics on people’s welfare.
The study identified five distinct clusters, each with different characteristics. Papua and West
Papua demonstrate the lowest average level in terms of healthy family indicators, whereas DKI
Jakarta shows the greatest indicator level. To eliminate the disparities, the government should
prioritize the following indicators: maternal health, infant health, and nutrition.
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