利用支持向量回归法预测每日消费者物价指数

Intan Ari Budiastuti, S. M. S. Nugroho, M. Hariadi
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引用次数: 10

摘要

通货膨胀率可以描述经济增长,通常被政策制定者用来确定货币政策。消费者价格指数(CPI)是衡量通货膨胀率的指标之一。到目前为止,通货膨胀计算和CPI预测都是按月进行的,尽管现在有可能通过在线商品价格变动来预测它们。每日预测可以成为分析市场真实价值的工具,并使政策制定者能够制定更好的政策。这是一项利用大数据开发CPI每日预测模型的初步研究。本文讨论了利用实时数据(每日商品价格和汇率)和支持向量回归方法的日预测模型。建立一个关注准确性和执行时间的模型。采用网格搜索和随机搜索两种方法选择支持向量回归模型的最佳参数。此外,我们还将SVR方法与线性回归和核岭回归方法进行了比较。结果表明,基于SVR-kernel RBF的预测模型的MSE值为0.3454,小于其他方法。过程数据的执行时间表明,Kernel Ridge方法的训练时间为0.0698s,略快于SVR方法的0.134s。
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Predicting daily consumer price index using support vector regression method
Inflation rate could describe economic growth and it is usually used by policy-maker to determine a monetary policy. The Consumer Price Index (CPI) is one of indicator used to measure inflation rate. Until now, the inflation calculations and CPI prediction are conducted on monthly even though it is now likely to predict them on daily basis by utilizing online commodity price movement. Daily predictions could become a tool to analyze the real value of the market and will allow policy-makers to make better policy. This is a preliminary research to develop daily CPI prediction model by using Big Data. This paper discussed daily prediction model by using real-time data (daily commodity price and exchange rate) and SVR method. Build a model focused on accuracy and execution time. Grid Search and Random Search method were applied to select the best parameter for SVR model. In addition, we compared SVR method with linear regression and Kernel Ridge Regression method. The results show that the prediction model using SVR-kernel RBF has MSE value, 0.3454, less than other methods. Execute time for process data show that Kernel Ridge method has training time 0.0698s, little faster than SVR method 0.134s.
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