Neural Computation
Comparison of approximate methods for handling hyperparameters
Neural Computation
Sparse bayesian learning and the relevance vector machine
The Journal of Machine Learning Research
Support Vector Echo-State Machine for Chaotic Time-Series Prediction
IEEE Transactions on Neural Networks
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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.