The application of Elman recurrent neural network model for forecasting consumer price index of education, recreation and sports in Yogyakarta

D. U. Wutsqa, R. Kusumawati, R. Subekti
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引用次数: 12

Abstract

Recurrent neural network is a network which provides feedback connections. This network is believed to have a more powerful approach than the typical neural network for learning given data. The current research was aimed to apply the simplest recurrent neural network model, namely the Elman recurrent neural network (ERNN) model, to the consumer price index (CPI) of education, recreation, and sports data in Yogyakarta. The pattern of CPI data can be categorized as a function of time period, which tends to move upwards when the time period is increased, and jump at some points of the time period. This pattern was identified as similar to the pattern resulted by the function of the truncated polynomial spline regression model (TPSR). Hence, this research considered ERNN model which the inputs such as in the TPSR model were established by taking into account the location of the knot or jump points. In addition, the ERNN model with a single input, a time period was also generated. The results demonstrated that the two models have high accuracy both in training and testing data. More importantly, it was found that the first model is more appropriate than the second one in testing data.
Elman递归神经网络模型在日惹市教育、娱乐和体育消费物价指数预测中的应用
递归神经网络是一种提供反馈连接的网络。这个网络被认为比典型的神经网络在学习给定数据方面有更强大的方法。本研究旨在将最简单的递归神经网络模型,即Elman递归神经网络(ERNN)模型应用于日惹市的教育、娱乐和体育消费价格指数(CPI)数据。CPI数据的模式可以划分为一个时间段的函数,随着时间段的增加,CPI数据有向上移动的趋势,在时间段的某些点出现跳跃。该模式与截断多项式样条回归模型(TPSR)的函数结果相似。因此,本研究考虑在TPSR模型等输入中考虑结点或跳点位置的ERNN模型。此外,还生成了单输入、一个时间段的ERNN模型。结果表明,两种模型在训练数据和测试数据上都具有较高的准确率。更重要的是,在测试数据中发现第一种模型比第二种模型更合适。
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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