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CPI Big Data Prediction Based on Wavelet Twin Support Vector Machine

机译:基于小波双支持向量机的CPI大数据预测

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In order to effectively improve the accuracy of Consumer Price Index (CPI) prediction so as to more truly reflect the overall level of the country's macroeconomic situation, a CPI big data prediction method based on wavelet twin support vector machine (SVM) is proposed. First, the historical CPI data are decomposed into high-frequency part and low-frequency part by wavelet transform. Then a more advanced twin SVM is used to build a prediction model to obtain two kinds of prediction results. Finally, the wavelet reconstruction method is used to fuse the two kinds of prediction results to obtain the final CPI prediction results. The wavelet twin SVM model is used to fit and predict CPI index. Experimental results show that compared with the similar prediction methods, the proposed prediction method has higher fitting accuracy and smaller root mean square error.
机译:为了有效提高消费者价格指数(CPI)预测的准确性,以便更真实地反映该国宏观经济情况的整体水平,提出了一种基于小波双支持向量机(SVM)的CPI大数据预测方法。 首先,历史CPI数据通过小波变换分解为高频部分和低频部分。 然后,使用更高级的双SVM来构建预测模型以获得两种预测结果。 最后,小波重建方法用于熔断两种预测结果以获得最终的CPI预测结果。 小波双SVM模型用于适合和预测CPI索引。 实验结果表明,与类似的预测方法相比,所提出的预测方法具有更高的拟合精度和较小的根均方误差。

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