Forecasting Performance of Double Exponential Smoothing Model and ETS Model for Predicting Crude Oil Prices

Hari Prapcoyo, Mohamad As'ad, Sujito Sujito, Sigit Setyowibowo, Eni Farida

Abstract


Purpose: This study aims to predict the price of monthly crude oil quickly and accurately by using an easy model and with easily available software.

Design/methodology/approach: This study compares the DES-Holts and ETS models to predict price of monthly crude oil.

Findings/result: The results of this study recommend the ETS(M,N,N) model to predict the price of monthly crude oil which produces an accuracy value of RMSE and MAPE of 4.385812 and 6.499007 %, respectively.

Originality/value/state of the art: This study implements the DES_Holt's and ETS models to predict price of monthly crude oil with an RMSE and MAPE forecasting accuracy that has never been done in previous studies.

 


Keywords


prediksi harga minyak mentah, model pemulusan eksponensial ganda, ETS

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References


Daftar Pustaka

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DOI: https://doi.org/10.31315/telematika.v20i2.8104

DOI (PDF): https://doi.org/10.31315/telematika.v20i2.8104.g5664

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