PENDEKATAN MODEL VECTOR AUTOREGRESSIVE (VAR) UNTUK MERAMALKAN FAKTOR-FAKTOR YANG MEMPENGARUHI INFLASI DI PROVINSI GORONTALO

Hariyati H. Usman, Ismail Djakaria, Muhammad Rezky Friesta Payu
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引用次数: 2

Abstract

The vector autoregressive (VAR) model is a simultaneous equation modeling used to construct forecasting systems from interrelated time-series data. This study intends to predict factors that significantly influence inflation in the province of Gorontalo. Moreover, the data used in this study involved inflation data and factors that influence inflation every month in the province in the period of January 2009 - December 2018. The results of inflation forecasting in Gorontalo in 2019 show that at the beginning of 2019, the inflation was considered to be very low at around -0.48% to -0.40%. However, the inflation surged in March with -0.25% (the highest inflation rate). The percentage decreased to -0.30% and -0.33% in April and May. After the decline in April and May, in the middle of the year (June) inflation returned to -0.31% and did not experience a significant change until the end of the year, which was still in the range of -0.32%. The accuracy of the prediction results seen in the MAPE value from out sample data of variables Y1 to Y8 is on the average below 10%, indicating that VAR is a significant forecasting model.
向量自回归(VAR)模型是一种联立方程模型,用于从相互关联的时间序列数据构建预测系统。本研究旨在预测影响哥伦塔洛省通货膨胀的重要因素。此外,本研究使用的数据涉及2009年1月至2018年12月期间该省每月的通货膨胀数据和影响通货膨胀的因素。2019年哥伦塔洛通胀预测结果显示,2019年初,通货膨胀率被认为非常低,约为-0.48%至-0.40%。但是,3月份的物价上涨率为-0.25%(最高上涨率)。这一比例在4月和5月分别降至-0.30%和-0.33%。在4月和5月的下降之后,年中(6月)通货膨胀率回到-0.31%,直到年底才出现明显变化,仍然在-0.32%的范围内。从变量Y1 ~ Y8的样本数据的MAPE值来看,预测结果的准确率平均在10%以下,说明VAR是一个显著的预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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