基于多元时间序列预测的云计算消费者价格指数深度学习算法

S. Zahara, Sugianto
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引用次数: 2

摘要

多变量时间序列预测为基于历史观测预测未来近期趋势或可能发生的事件提供了机会。经济预测已成为全球关注的问题,特别是研究人员寻求使用多种方法获得最准确的结果。消费者价格指数是中央银行设定通胀目标的主要工具。然而,以往的研究大多只采用单变量因素来预测消费者物价指数。此外,预测系统的模型开发大多是由个人和物理服务器完成的,面临着不切实际且耗时的问题。由于消费者价格指数的测量方法通常是选取不同产品的期间价格变动的平均值,我们使用多层感知器和深度学习的长短期记忆(LSTM),利用2014年至2018年泗水28种日常食品价格进行了基于云计算的多元消费者价格指数预测。此外,我们实现了神经元、epoch和隐藏层数量的架构变化。整个预测系统的开发是建立在亚马逊网络服务(AWS)云上的。结果表明,多层感知器的精度最高,RMSE为3.380,包含2个隐藏层,第一隐藏层有10个神经元,第二层隐藏层有10个神经元,epoch为1000。
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Multivariate Time Series Forecasting Based Cloud Computing For Consumer Price Index Using Deep Learning Algorithms
Multivariate time series forecasting affords an opportunity to forecast future recent trends or possibility incident based on historical observations. Forecasting in economic world becomes global interest particularly for researchers seeking for best accuracy result using several methods. Consumer Price Index is the primary instrument used by central banks to set inflation targets. However, most of previous studies commonly only used univariate factor to forecast Consumer Price Index. Furthermore, mostly model development of forecasting system is done by personal and physical server facing the problem of impractical yet time consuming. Since measuring method of Consumer Price Index commonly is pick an average of the period-to-period price move for the different products, we conducted multivariate Consumer Price Index forecasting based Cloud Computing utilizing 28 types of Surabaya daily food price from 2014 to 2018 using Multilayer Perceptron and Long Short Term Memory (LSTM) of deep learning. Furthermore, we implement architectural variations of the number of neurons, epoch, and hidden layers. The whole development of forecasting system is built in Amazon Web Service (AWS) Cloud. The result indicated the best accuracy value was obtained from the Multilayer Perceptron with 3.380 of RMSE consist of a configuration of 2 hidden layers, 10 neurons of first hidden layer, 10 neurons of second hidden layer also 1000 of epoch.
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