Penerapan Metode K-Means Clustering dalam Pengelompokkan Tingkat Pengangguran di Provinsi Lampung
DOI:
https://doi.org/10.55606/juisik.v6i2.2414Keywords:
Data Mining, K-Means Clustering, Lampung, Open Unemployment Rate, UnemploymentAbstract
Unemployment is one of the main problems in economic development in Indonesia. One of the indicators used to measure the economic condition of a region is the Open Unemployment Rate. The purpose of this study is to provide information regarding a more detailed grouping of the number of unemployment rates in each district/city in Lampung Province, through the application of the K-Means clustering algorithm method. The data used in the study were taken from the official website of the Central Statistics Agency (BPS) of Lampung Province in 2025, which includes data on the Open Unemployment Rate (TPT) and the Poverty Rate. The application of K-Means clustering was used to break down the data into groups. The research method includes four steps: data collection, data preparation, modeling, and evaluation (using the Davies Bouldin Index theory), using the RapidMiner application as a support to facilitate data mining processing. The results of this study are to provide information about the unemployment rate groups in Lampung Province into 3 groups, namely low unemployment rate, medium unemployment rate, and high unemployment rate, which will divide all districts in Lampung Province.
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