Comparison of Indonesian Imports Forecasting by Limited Period Using SARIMA Method

The development of Indonesia's imports fluctuate over years. Inability to anticipate such rapid changes can cause economic slump due to inappropriate policy. For instance, recent years imports in rice led to the extermination of rice reserves. The reason is to maintain the market price of rice...

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Main Authors: Harits Ar Rosyid, Mutyara Whening Aniendya, Heru Wahyu Herwanto
Format: Article
Language:English
Published: Universitas Negeri Malang 2019-12-01
Series:Knowledge Engineering and Data Science
Online Access:http://journal2.um.ac.id/index.php/keds/article/view/11100
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spelling doaj-f7c8388a40d4494990e57b25d53957ff2020-11-25T03:00:21ZengUniversitas Negeri MalangKnowledge Engineering and Data Science2597-46022597-46372019-12-01229010010.17977/um018v2i22019p90-1004530Comparison of Indonesian Imports Forecasting by Limited Period Using SARIMA MethodHarits Ar Rosyid0Mutyara Whening Aniendya1Heru Wahyu Herwanto2Universitas Negeri Malang, IndonesiaUniversitas Negeri MalangUniversitas Negeri MalangThe development of Indonesia's imports fluctuate over years. Inability to anticipate such rapid changes can cause economic slump due to inappropriate policy. For instance, recent years imports in rice led to the extermination of rice reserves. The reason is to maintain the market price of rice in Indonesia. To overcome these changes, forecasting the amount of imports should assist the Government in determining the optimum policy. This can be done by utilizing an algorithm to forecast time series data, in this case the amount of imports in the next few months with a high degree of accuracy. This study uses data obtained from the official website of the Indonesian Ministry of Trade. Then, Seasonal Autoregressive Integrated Moving Average (SARIMA) method is applied to forecast the imports. This method is suitable for the interconnected dependent variables, as well as in forecasting seasonal data patterns. The results of the experiment showed that 6-period forecast is the most accurate results compared to forecasting by 16 and 24 periods. The research resulted in the best model, that is ARIMA (0, 1, 3)(0, 1, 1)12 produces forecasting with a MAPE value of 7.210 % or an accuracy rate of 92.790 %. By applying this imports forecast model, the government can have a forward strategic plans such as selectively imports products and carefully decide the amount of the incoming products to Indonesia. Hence, it could maintain or improve the economic condition where local businesses can grow confidently.http://journal2.um.ac.id/index.php/keds/article/view/11100
collection DOAJ
language English
format Article
sources DOAJ
author Harits Ar Rosyid
Mutyara Whening Aniendya
Heru Wahyu Herwanto
spellingShingle Harits Ar Rosyid
Mutyara Whening Aniendya
Heru Wahyu Herwanto
Comparison of Indonesian Imports Forecasting by Limited Period Using SARIMA Method
Knowledge Engineering and Data Science
author_facet Harits Ar Rosyid
Mutyara Whening Aniendya
Heru Wahyu Herwanto
author_sort Harits Ar Rosyid
title Comparison of Indonesian Imports Forecasting by Limited Period Using SARIMA Method
title_short Comparison of Indonesian Imports Forecasting by Limited Period Using SARIMA Method
title_full Comparison of Indonesian Imports Forecasting by Limited Period Using SARIMA Method
title_fullStr Comparison of Indonesian Imports Forecasting by Limited Period Using SARIMA Method
title_full_unstemmed Comparison of Indonesian Imports Forecasting by Limited Period Using SARIMA Method
title_sort comparison of indonesian imports forecasting by limited period using sarima method
publisher Universitas Negeri Malang
series Knowledge Engineering and Data Science
issn 2597-4602
2597-4637
publishDate 2019-12-01
description The development of Indonesia's imports fluctuate over years. Inability to anticipate such rapid changes can cause economic slump due to inappropriate policy. For instance, recent years imports in rice led to the extermination of rice reserves. The reason is to maintain the market price of rice in Indonesia. To overcome these changes, forecasting the amount of imports should assist the Government in determining the optimum policy. This can be done by utilizing an algorithm to forecast time series data, in this case the amount of imports in the next few months with a high degree of accuracy. This study uses data obtained from the official website of the Indonesian Ministry of Trade. Then, Seasonal Autoregressive Integrated Moving Average (SARIMA) method is applied to forecast the imports. This method is suitable for the interconnected dependent variables, as well as in forecasting seasonal data patterns. The results of the experiment showed that 6-period forecast is the most accurate results compared to forecasting by 16 and 24 periods. The research resulted in the best model, that is ARIMA (0, 1, 3)(0, 1, 1)12 produces forecasting with a MAPE value of 7.210 % or an accuracy rate of 92.790 %. By applying this imports forecast model, the government can have a forward strategic plans such as selectively imports products and carefully decide the amount of the incoming products to Indonesia. Hence, it could maintain or improve the economic condition where local businesses can grow confidently.
url http://journal2.um.ac.id/index.php/keds/article/view/11100
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AT heruwahyuherwanto comparisonofindonesianimportsforecastingbylimitedperiodusingsarimamethod
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