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Multivariate chaotic system modeling based on nonuniform state space reconstruction and echo state network

机译:基于非均匀状态空间重构和回波状态网络的多元混沌系统建模

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A new learning framework is proposed for multivariate chaotic system modeling. In order to construct suitable input variables, we put forward a scheme of input variable selection based on nonuniform state space reconstruction. A new criteria based on low dimensional approximation of joint mutual information is derived, which is solved by evolutionary computation approach efficiently with low computation complexity. Then, echo state network is adopted as prediction model, which has powerful capability for nonlinear predicting. To improve generalization performance and stability of the predictive model, we introduce feature selection in the training process. Feature selection method can control complexity of the network and prevent overfitting. The model is applied to the prediction of real world time series. The simulation results show the effectiveness and practicality of the proposed method.
机译:提出了一种新的用于多元混沌系统建模的学习框架。为了构造合适的输入变量,提出了一种基于非均匀状态空间重构的输入变量选择方案。推导了一种基于联合互信息的低维逼近的新准则,该准则可以通过进化计算方法有效地解决,且计算复杂度低。然后,采用回波状态网络作为预测模型,具有强大的非线性预测能力。为了提高预测模型的泛化性能和稳定性,我们在训练过程中引入了特征选择。特征选择方法可以控制网络的复杂性并防止过度拟合。该模型应用于现实世界时间序列的预测。仿真结果表明了该方法的有效性和实用性。

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