ANFIS与NFS在通货膨胀率预测上的比较

Nadia Roosmalita Sari, A. Wibawa, W. Mahmudy
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引用次数: 2

摘要

通货膨胀对国民经济影响很大。如果通货膨胀控制不好,货币危机就会发生。为此,需要一个预测。通货膨胀率预测可以根据历史数据预测未来的国家情况。本文提出两种模糊逻辑-神经网络混合预测印尼通货膨胀率的方法。选择自适应神经模糊推理系统(ANFIS)和神经模糊系统(NFS),因为这两种方法都是混合模糊逻辑-神经网络,但结构不同。本研究旨在寻找具有最佳性能的方法。使用时间序列数据和一些外部因素(CPI,货币供应量,BI Rate,汇率)作为参数。必须找到合适的神经网络结构才能获得较高的精度。因此,进行了一些测试(学习率、epoch、神经元)。根据均方根误差分析技术产生的精度水平选择最佳方法。结果表明,NFS在准确率上优于ANFIS (RMSE=1.213)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of ANFIS and NFS on inflation rate forecasting
Inflation is very influential on the national economy. The monetary crisis can occur if inflation is not well controlled. For that, it takes a forecasting. Inflation rate forecasting can predict future country situation based on historical data. This study proposes two hybrid Fuzzy logic-Neural network methods to predict inflation rate in Indonesia. Adaptive Neuro Fuzzy Inference System (ANFIS) and Neural Fuzzy System (NFS) were chosen because both methods are hybrid Fuzzy logic-Neural network with different architecture. This study aims to find the method that has the best performance. Time series data and some external factors (CPI, Money Supply, BI Rate, Exchange Rate) are used as parameters. Proper Neural Network (NN) architecture must be found to produce high accuracy. Therefore, some tests (learning rate, epoch, neuron) are performed. The best method is chosen based on the level of accuracy produced by using Root Mean Square Error analysis technique. The results show that NFS has better performance with accuracy (RMSE=1.213) than ANFIS.
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