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Nonlinear prediction of gross industrial output time series by Gradient Boosting

机译:基于梯度提升的工业总产值时间序列的非线性预测

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Predicting gross industrial production is helpful to design plan in development zone. History data in Jinchuan district, Hohhot, were collected. BDS, Ljung-Box, Box-Pierce, White's and Teraesvirta's neural network test and surrogate data test were combined to selecting a proper model. According to phase space reconstruction, function fitting was finished by Gradient Boosting. The results showed that nonlinear dependence existed in series. The production in 2015 was predicted to be 6937977 ten thousand Yuan.
机译:预测工业总产值有助于开发区的设计计划。收集呼和浩特市金川区的历史资料。结合BDS,Ljung-Box,Box-Pierce,White和Teraesvirta的神经网络测试和替代数据测试来选择合适的模型。根据相空间重构,通过梯度提升完成了函数拟合。结果表明,非线性相关性是串联存在的。预计2015年产量为6937977万元。

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