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Articles
Published: 2020-12-30

Penerapan Model Vector Autoregressive Integrate Moving Average dalam Peramalan Laju Inflasi dan Suku Bunga di Indonesia

Universitas Mataram
Universitas Mataram
Universitas Mataram
Akaike’s Information Criterion (AIC) Mean Absolute Percentage Error (MAPE) Multivariate time series VARIMA

Abstract

The inflation and interest rates in Indonesia have a significant impact on the country's economic development. Indonesian inflation and interest rates data are multivariate time series data that show activity over a certain period of time. Vector Autoregressive Integrated Moving Average (VARIMA) is a method for analyzing multivariate time series data. This method is a simultaneous equation modeling that has several endogenous variables simultaneously. This study aimed to model the inflation and interest rates data, from January 2009 to December 2016 and predict inflation and interest rates by using VARIMA method. The model obtained was the VARIMA(0,2,2) model, with estimated parameters using the maximum likelihood method. The choice of the VARIMA(0,2,2) model was based on the smallest AIC value of -4,2891, with a MAPE value for the inflation and interest rates forecasting were 6,04% and 1,84%, respectively, which indicates a very good forecast results.

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How to Cite

Jusmawati, J., Hadijati, M., & Fitriyani, N. (2020). Penerapan Model Vector Autoregressive Integrate Moving Average dalam Peramalan Laju Inflasi dan Suku Bunga di Indonesia. EIGEN MATHEMATICS JOURNAL, 3(2), 73–82. https://doi.org/10.29303/emj.v3i2.62