Goh SL, Mandic DP. (2004). A complex-valued RTRL algorithm for recurrent neural networks. Neural computation. 16 [PubMed]

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References and models that cite this paper

Goh SL, Mandic DP. (2007). An augmented extended Kalman filter algorithm for complex-valued recurrent neural networks. Neural computation. 19 [PubMed]

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