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Multi-reservoir Echo State Network with Sparse Bayesian Learning

机译:具有稀疏贝叶斯学习的多水库回声状态网络

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A multi-reservoir Echo State Network based on the Sparse Bayesian method (MrBESN) is proposed in this paper. When multivariate time series are predicted with single reservoir ESN model, the dimensions of phase-space reconstruction can be only selected a single value, which can not portray respectively the dynamic feature of complex system. To some extent, that limits the freedom degree of the prediction model and has bad effect on the predicted result. MrBESN will expand the simple input into high-dimesional feature vector and provide the automatic estimation of the hyper-parameters with Sparse Bayesian. A simulation example, that is a set of real world time series, is used to demonstrate the validity of the proposed method.
机译:提出了一种基于稀疏贝叶斯方法(MrBESN)的多水库回波状态网络。当用单储层ESN模型预测多元时间序列时,相空间重构的维数只能选择一个值,而不能分别刻画复杂系统的动态特征。在某种程度上,这限制了预测模型的自由度,并且对预测结果有不良影响。 MrBESN会将简单的输入扩展为高维特征向量,并使用稀疏贝叶斯算法提供对超参数的自动估计。仿真示例是一组真实世界的时间序列,用于证明该方法的有效性。

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