Analisis Prediksi Harga Minyak Mentah WTI dengan Metode ANN Backpropagation dan Long Short-Term Memory
DOI:
https://doi.org/10.62712/juktisi.v4i3.809Keywords:
Harga minyak mentah WTI, Deret waktu, Jaringan saraf tiruan, Backpropagation, Long Short-Term MemoryAbstract
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