Predicting the ASEAN-4 sectoral performance using commodity price indices

This study focuses on analyzing the relationship between commodities and sectorial performance in the ASEAN-4 countries (Philippines, Indonesia, Malaysia and Thailand) over the period of 2011-2017, whether the former can be utilized to predict the latter. RICI commodity indices (base metals, preciou...

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Main Authors: Celestino, Raymond B., Doria, John Joseph, Temporal, Carlos Angelo O., Yap, Tyrone Jeremy C.
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Language:English
Published: Animo Repository 2017
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Online Access:https://animorepository.dlsu.edu.ph/etd_bachelors/9729
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Institution: De La Salle University
Language: English
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spelling oai:animorepository.dlsu.edu.ph:etd_bachelors-103742021-08-17T06:47:40Z Predicting the ASEAN-4 sectoral performance using commodity price indices Celestino, Raymond B. Doria, John Joseph Temporal, Carlos Angelo O. Yap, Tyrone Jeremy C. This study focuses on analyzing the relationship between commodities and sectorial performance in the ASEAN-4 countries (Philippines, Indonesia, Malaysia and Thailand) over the period of 2011-2017, whether the former can be utilized to predict the latter. RICI commodity indices (base metals, precious metals, energy and agriculture) are used to represent the performance of commodities and the proponents devised their own sectorial indices (financial, industrial, services, property and mining & oil) to represent each sectorial performance. Sectors are composed of sub-sectors which constitute the top five largest companies based on its market capitalization. ARIMAX is used as the statistical model for the study. ARIMA and cointegration tests are also used to evaluate the forecasting power of the ARIMAX model in addition to back testing. Empirical results showed that all of the sectors in an aggregate of the 4-ASEAN countries were affected by one or more commodities and exhibited a direct relationship to the former. RICI-agriculture have the largest influence on the property, industrial, services and financial sectors while base metals have the most impact on mining and oil sector. Moreover, forecasted values obtained from ARIMAX is closer to the actual in comparison to the values obtained from ARIMA. These results indicate that individuals can utilize the current values of certain commodity indices to predict performance of certain sectors tomorrow. Nonetheless, only a few ARIMAX models have cointegrated independent and dependent variables, suggesting that these predictive models will be inefficient in the long run. 2017-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/etd_bachelors/9729 Bachelor's Theses English Animo Repository Price indexes
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
language English
topic Price indexes
spellingShingle Price indexes
Celestino, Raymond B.
Doria, John Joseph
Temporal, Carlos Angelo O.
Yap, Tyrone Jeremy C.
Predicting the ASEAN-4 sectoral performance using commodity price indices
description This study focuses on analyzing the relationship between commodities and sectorial performance in the ASEAN-4 countries (Philippines, Indonesia, Malaysia and Thailand) over the period of 2011-2017, whether the former can be utilized to predict the latter. RICI commodity indices (base metals, precious metals, energy and agriculture) are used to represent the performance of commodities and the proponents devised their own sectorial indices (financial, industrial, services, property and mining & oil) to represent each sectorial performance. Sectors are composed of sub-sectors which constitute the top five largest companies based on its market capitalization. ARIMAX is used as the statistical model for the study. ARIMA and cointegration tests are also used to evaluate the forecasting power of the ARIMAX model in addition to back testing. Empirical results showed that all of the sectors in an aggregate of the 4-ASEAN countries were affected by one or more commodities and exhibited a direct relationship to the former. RICI-agriculture have the largest influence on the property, industrial, services and financial sectors while base metals have the most impact on mining and oil sector. Moreover, forecasted values obtained from ARIMAX is closer to the actual in comparison to the values obtained from ARIMA. These results indicate that individuals can utilize the current values of certain commodity indices to predict performance of certain sectors tomorrow. Nonetheless, only a few ARIMAX models have cointegrated independent and dependent variables, suggesting that these predictive models will be inefficient in the long run.
format text
author Celestino, Raymond B.
Doria, John Joseph
Temporal, Carlos Angelo O.
Yap, Tyrone Jeremy C.
author_facet Celestino, Raymond B.
Doria, John Joseph
Temporal, Carlos Angelo O.
Yap, Tyrone Jeremy C.
author_sort Celestino, Raymond B.
title Predicting the ASEAN-4 sectoral performance using commodity price indices
title_short Predicting the ASEAN-4 sectoral performance using commodity price indices
title_full Predicting the ASEAN-4 sectoral performance using commodity price indices
title_fullStr Predicting the ASEAN-4 sectoral performance using commodity price indices
title_full_unstemmed Predicting the ASEAN-4 sectoral performance using commodity price indices
title_sort predicting the asean-4 sectoral performance using commodity price indices
publisher Animo Repository
publishDate 2017
url https://animorepository.dlsu.edu.ph/etd_bachelors/9729
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