Optimasi Kinerja Linear Regression, Random Forest Regression Dan Multilayer Perceptron Pada Prediksi Hasil Panen
Evita Fitri,
Siti Nurhasanah Nugraha
Abstract:Rice yield prediction is a significant challenge in the context of climate uncertainty and farmland variation. Erratic weather factors, along with land differences, make this prediction more complex. This research aims to address these issues using a machine learning approach. The method used involves three machine learning models namely Linear regression, Random Forest Regression, and ANN with MultiLayer Perceptron algorithm as well as the evaluation matrix RMSE (Root Mean Squared Error), MAE (Mean Absolute E… Show more
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