PERBANDINGAN METODE ANN BACKPROPAGATION DAN ARMA UNTUK PERAMALAN INFLASI DI INDONESIA

M. Amaly, Ristu Haiban Hirzi, B. Basirun
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Abstract

A country's development progress can be measured by good economic growth. If economic growth experiences rapid growth, it will usually trigger price increases. The occurrence of an uncontrolled increase in the price of goods or services for the needs of the community can cause inflation. inflation rate for a country is an inflation rate that has a low and stable value. One alternative is to provide an overview of the inflation in Indonesia by using forecasting analysis techniques. In this study, inflation forecasting analysis in Indonesia was carried out using the ANN Backpropagation and ARMA methods. The purpose of this research is to compare the performance results of the two methods and look at the best method for forecasting results. Based on the results of the analysis with the ANN Backpropagation method, the best network architecture model was ANN(7-4-1) using an epoch value of 400 and a learning rate of 0,1 with a value of MSE = 0,0112 and RMSE = 0,1065. While the results of the analysis using the ARMA method, the best model was obtained, namely ARMA(2,0,1) with the value MSE = 0,0648 and RMSE = 0,2545. So that the most optimal method used to predict inflation for the next period is the ANN Backpropagation method because it has a smaller error value. From this model, the results of forecasting inflation rates for the months of May to December 2022 are also obtained with a range of 0,01% to 0,5%. 
一个国家的发展进步可以通过良好的经济增长来衡量。如果经济快速增长,通常会引发价格上涨。为满足社会需要而出现的商品或服务价格不受控制的上涨会引起通货膨胀。对一个国家来说,通货膨胀率是一个具有较低且稳定值的通货膨胀率。另一种选择是利用预测分析技术概述印度尼西亚的通货膨胀情况。本研究采用人工神经网络反向传播和ARMA方法对印度尼西亚的通货膨胀进行预测分析。本研究的目的是比较两种方法的性能结果,并寻找预测结果的最佳方法。基于ANN反向传播方法的分析结果,最佳网络结构模型为ANN(7-4-1),其历元值为400,学习率为0.1,MSE = 0,0112, RMSE = 0,1065。而采用ARMA方法分析的结果,得到了最佳模型ARMA(2,0,1), MSE = 0,0648, RMSE = 0,2545。因此,用于预测下一时期通货膨胀的最优方法是人工神经网络反向传播方法,因为它的误差值较小。根据该模型,也得到了2022年5月至12月通货膨胀率的预测结果,范围为0.1%至0.5%。
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