Comparison of Fuzzy Time Series Methods and Autoregressive Integrated Moving Average (ARIMA) for Inflation Data

A. Qalbi, Khalilah Nurfadilah, Wahidah Alwi
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Abstract

This study compares the Fuzzy Time Series (FTS) method with the Autoregressive Integrated Moving Average (ARIMA) method on time series data. These two methods are often used in predicting future data. Forecasting or time-series data analysis is used to analyze data in the form of time series. In this study, Indonesian inflation data was used to be analyzed in comparing the FTS and ARIMA methods. Inflation is one of the economic indicators used to measure the success of a country's economy. If the inflation rate is low and stable, it will stimulate economic growth. This inflation value is calculated every month where the value can decrease and increase from one period to another. Comparison of the FTS and ARIMA methods is seen in the error value generated by the two methods. A method can be better than other methods if the value of the resulting forecast error is smaller. In this study, Mean Squared Error (MSE) and Mean Absolute Percentage Error (MAPE) were used to see the magnitude of the error value of the two methods on the fives data testing used. The results obtained in this study are the results of Indonesia's inflation forecast for the period January to May 2021 using the FTS method, respectively, at 0.57%, 0.375%, 0.2%, 0.2%, and 0.1125%, while the forecast results using the ARIMA method, respectively. Of 0.3715848%, 0.2362817%, 0.1508295%, 0.1731906%, and 0.2432851% and the results of calculating the size of error using MSE and MAPE indicate that the ARIMA method with the model ARIMA(3,0,0) is better at predicting inflation data in Indonesia with a value of MSE of 0.009 and MAPE of 64.987% compared to the FTS method resulted in MSE values of 0.047 and MAPE of 132.548%. 
通货膨胀数据的模糊时间序列方法与自回归综合移动平均(ARIMA)的比较
本文比较了模糊时间序列(FTS)方法和自回归综合移动平均(ARIMA)方法对时间序列数据的影响。这两种方法常用于预测未来数据。预测或时间序列数据分析是用来分析时间序列形式的数据。在本研究中,我们使用印尼的通货膨胀数据来比较FTS和ARIMA方法。通货膨胀是衡量一个国家经济成功与否的经济指标之一。如果通货膨胀率低而稳定,就会刺激经济增长。这个通货膨胀值每月计算一次,从一个时期到另一个时期,这个值可以减少或增加。从两种方法产生的误差值可以看出FTS和ARIMA方法的比较。如果结果的预测误差值较小,则一种方法可能比其他方法更好。本研究采用均方误差(Mean Squared Error, MSE)和平均绝对百分比误差(Mean Absolute Percentage Error, MAPE)来衡量两种方法对所使用的5个数据检验的误差值的大小。本研究得到的结果是印度尼西亚2021年1 - 5月的通货膨胀预测结果,分别采用FTS方法为0.57%、0.375%、0.2%、0.2%和0.1125%,而采用ARIMA方法的预测结果分别为0.57%、0.375%、0.1125%。分别为0.3715848%、0.2362817%、0.1508295%、0.1731906%和0.2432851%,利用MSE和MAPE计算误差大小的结果表明,与MSE为0.047、MAPE为132.548%的FTS方法相比,基于ARIMA(3,0,0)模型的ARIMA方法对印度尼西亚通胀数据的预测效果更好,MSE为0.009,MAPE为64.987%。
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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