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Multivariate time series prediction of high dimensional data based on deep reinforcement learning

机译:基于深增强学习的高维数据多变量时间序列预测

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In order to improve the prediction accuracy of high-dimensional data time series, a high-dimensional data multivariate time series prediction method based on deep reinforcement learning is proposed. The deep reinforcement learning method is used to solve the time delay of each variable and mine the data characteristics. According to the principle of maximum conditional entropy, the embedding dimension of the phase space is expanded, and a multivariate time series model of high-dimensional data is constructed. Thus, the conversion of reconstructed coordinates from low-dimensional to high-dimensional can be kept relatively stable. The strong independence and low redundancy of the final reconstructed phase space construct an effective model input vector for multivariate time series forecasting. Numerical experiments of classical multivariable chaotic time series show that the method proposed in this paper has better forecasting effect, which shows the forecasting effectiveness of this method.
机译:为了提高高维数据时间序列的预测精度,提出了一种基于深增强学习的高维数据多变量时间序列预测方法。深度加强学习方法用于解决每个变量的时间延迟并挖掘数据特征。根据最大条件熵的原理,扩展了相空间的嵌入尺寸,构建了高维数据的多变量时间序列模型。因此,从低维到高维的重建坐标的转换可以保持相对稳定。最终重建相空间的强大独立性和低冗余构建了多变量时间序列预测的有效模型输入载体。经典多变量混沌时间序列的数值实验表明,本文提出的方法具有更好的预测效果,这表明了该方法的预测效果。

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