Modeling and forecasting coconut oil prices using time series data analysis based on Box-Jenkins methodology
Coconut oil is a significant global commodity, ranking 4th most valuable after palm oil. Its rising demand and market volatility have heightened the need for accurate price forecasting to guide investment decisions. This study uses the Box-Jenkins methodology to develop a prediction model for coco...
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my.iium.irep.1152712024-10-24T09:33:27Z http://irep.iium.edu.my/115271/ Modeling and forecasting coconut oil prices using time series data analysis based on Box-Jenkins methodology Bahrom, Suhaila Ab Rani, Anuar Ibrahim, Muhammad Hasri QA300 Analysis Coconut oil is a significant global commodity, ranking 4th most valuable after palm oil. Its rising demand and market volatility have heightened the need for accurate price forecasting to guide investment decisions. This study uses the Box-Jenkins methodology to develop a prediction model for coconut oil prices. Monthly secondary data from the World Bank, covering January 1960 to March 2024, was analysed using R software. A Box-Cox transformation was applied to stabilize variance and address issues such as non-normality and heteroscedasticity in the data. After testing various ARIMA models, the ARIMA (0,1,0) model was identified as the most suitable for forecasting, with a MAPE of 27%, suggesting reasonable accuracy. The model provides a reliable tool for predicting future price trends. These findings are critical for industry stakeholders, enabling more informed decision-making and strategic planning by offering a clearer understanding of price fluctuations in the coconut oil market. This analysis contributes to optimizing investments and managing risks in a dynamic market environment. ICBE Publication 2024-10-23 Proceeding Paper PeerReviewed application/pdf en http://irep.iium.edu.my/115271/1/115271_Modeling%20and%20forecasting%20coconut%20oil%20prices.pdf Bahrom, Suhaila and Ab Rani, Anuar and Ibrahim, Muhammad Hasri (2024) Modeling and forecasting coconut oil prices using time series data analysis based on Box-Jenkins methodology. In: 15th International Conference on Business Studies and Education (ICBE), 28th - 29th September 2024, Virtual Conference. |
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QA300 Analysis Bahrom, Suhaila Ab Rani, Anuar Ibrahim, Muhammad Hasri Modeling and forecasting coconut oil prices using time series data analysis based on Box-Jenkins methodology |
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Coconut oil is a significant global commodity, ranking 4th most valuable after palm oil. Its rising demand and
market volatility have heightened the need for accurate price forecasting to guide investment decisions. This study
uses the Box-Jenkins methodology to develop a prediction model for coconut oil prices. Monthly secondary data
from the World Bank, covering January 1960 to March 2024, was analysed using R software. A Box-Cox
transformation was applied to stabilize variance and address issues such as non-normality and heteroscedasticity
in the data. After testing various ARIMA models, the ARIMA (0,1,0) model was identified as the most suitable
for forecasting, with a MAPE of 27%, suggesting reasonable accuracy. The model provides a reliable tool for
predicting future price trends. These findings are critical for industry stakeholders, enabling more informed
decision-making and strategic planning by offering a clearer understanding of price fluctuations in the coconut oil
market. This analysis contributes to optimizing investments and managing risks in a dynamic market environment. |
format |
Proceeding Paper |
author |
Bahrom, Suhaila Ab Rani, Anuar Ibrahim, Muhammad Hasri |
author_facet |
Bahrom, Suhaila Ab Rani, Anuar Ibrahim, Muhammad Hasri |
author_sort |
Bahrom, Suhaila |
title |
Modeling and forecasting coconut oil prices using time series data analysis based on Box-Jenkins methodology |
title_short |
Modeling and forecasting coconut oil prices using time series data analysis based on Box-Jenkins methodology |
title_full |
Modeling and forecasting coconut oil prices using time series data analysis based on Box-Jenkins methodology |
title_fullStr |
Modeling and forecasting coconut oil prices using time series data analysis based on Box-Jenkins methodology |
title_full_unstemmed |
Modeling and forecasting coconut oil prices using time series data analysis based on Box-Jenkins methodology |
title_sort |
modeling and forecasting coconut oil prices using time series data analysis based on box-jenkins methodology |
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ICBE Publication |
publishDate |
2024 |
url |
http://irep.iium.edu.my/115271/1/115271_Modeling%20and%20forecasting%20coconut%20oil%20prices.pdf http://irep.iium.edu.my/115271/ |
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13.211869 |