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Fig. 9 | BMC Bioinformatics

Fig. 9

From: Exploring spatial-frequency-sequential relationships for motor imagery classification with recurrent neural network

Fig. 9

The curves of LSTM-RNN and GRU-RNN’s training and validation cross-entropies as the number of hidden layers increased. The training and validation cross-entropies have separations over 20 hidden layers. The cross-entropies will not reduce if the signals are over-fitting by RNN. In fact, the cross-entropies will not increase, so the deep RNN architecture continues to learn components of the signals that are common to all of the EEG sequences. a The curves of LSTM-RNN and b The curves of GRU-RNN

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