Comparison of the Chen and Sinsgh’s Fuzzy Time Series Methods in Forecasting Farmer Exchange Rates in Indonesia

None Okia Dinda Kelana, None Atus Amadi Putra, None Nonong Amalita, None Admi Salma
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Abstract

Chen and Singh's Fuzzy Time Series Model is a forecasting method that uses the basi fuzzy logic in the process. The differences in the models are in the fuzzy logic relations. Chen's model uses Fuzzy Logical Relationship Groups. Meanwhile, the Singh model uses only Fuzzy Logical Relationships in the forecasting process. To find out the best model between the two models, forecasting the Farmer's Exchange Rate is carried out. Farmers' exchange rates are the option for observers of agricultural development in assessing the level of welfare of farmers in Indonesia. With changes in farmer exchange rates every month, it is necessary to forecast data in order to obtain an overview for the following month. Research used is applied research where the initial step is to study and analyze the theories related to our research, then colect the necessary data. The data used is data secondary data obtained online from the official website of the Badan Pusat Statistika (BPS). the forecasting results of the two models were compared using MAPE. The results of the comparison of the accuracy of the prediction accuracy of Chen and Singh's fuzzy time series models on farmers' exchange rates obtained Chen's MAPE fuzzy time series values ​​of 0.679% and Singh's fuzzy time series models of 0.354%. This means that the best forecasting model for farmer exchange rates in Indonesia is the Singh model.
Chen和Sinsgh模糊时间序列方法预测印尼农民汇率的比较
Chen和Singh的模糊时间序列模型是一种在过程中使用基本模糊逻辑的预测方法。模型的不同之处在于模糊逻辑关系。Chen的模型使用模糊逻辑关系组。同时,Singh模型在预测过程中只使用模糊逻辑关系。为了找出两种模型之间的最佳模型,对农民汇率进行了预测。农民汇率是农业发展观察员在评估印尼农民福利水平时的选择。随着每个月农民汇率的变化,有必要对数据进行预测,以便获得下个月的概况。所使用的研究是应用研究,其中第一步是研究和分析与我们的研究相关的理论,然后收集必要的数据。所使用的数据为从巴丹市统计局(BPS)官方网站在线获取的数据。利用MAPE对两种模型的预测结果进行了比较。对比Chen和Singh的模糊时间序列模型对农民汇率的预测精度,得到Chen的MAPE模糊时间序列值为0.679%,Singh的模糊时间序列模型值为0.354%。这意味着印度尼西亚农民汇率的最佳预测模型是辛格模型。
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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