Prediksi Tingkat Kesejahteraan di Indonesia Menggunakan Random Forest Regressor Berdasarkan Indikator SDGs
Prediction of Welfare Level in Indonesia Using Random Forest Regressor Based on SDGs Indicators

Date
2025Author
Sitompul, June Three Br
Advisor(s)
Jaya, Ivan
Pulungan, Annisa Fadhillah
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Show full item recordAbstract
Every country in the world has a responsibility to ensure the welfare of its people. The
welfare of the people in Indonesia can also be assessed from the high and low HDI
value. As an effort to improve people's welfare and overcome social inequality,
Indonesia has committed to achieving the Sustainable Development Goals (SDGs) that
have been inaugurated by the United Nations (UN). The development of effective and
sophisticated analysis methods is a must to know and control risks related to people's
welfare. One of the approaches that emerged is the application of Machine Learning
techniques, especially Random Forest Regressor which is one of the ensemble learning
based algorithms implemented for regression tasks. From the entire process of this
research, in the prediction of community welfare in Indonesia using Random Forest
Regressor based on SDGs indicators, MSE value of 0.96, RMSE of 0.92 and R2 of
0.96.
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- Undergraduate Theses [858]