An evolving reservoir neo-fuzzy network for time series prediction
Reservoir Computing is a paradigm of training Recurrent Neural Networks based on treating the recurrent part (the so-called “reservoir”) differently from the readouts. This paradigm has become so popular recently due to its computational efficiency and the fact that it’s enough to train only a supervised readout. Meanwhile Evolving Systems define a new approach which focuses on learning fuzzy systems that have both their parameters and their structure adapting on-line.