Bengio Y, Simard P, Frasconi P. (1994). Learning long-term dependencies with gradient descent is difficult. IEEE transactions on neural networks. 5 [PubMed]
Benvenuto N, Piazza F. (1992). On the complex back-propagation algorithm IEEE Trans Signal Processing. 40
Coelho PHG. (2001). A complex EKF-RTRL neural network Intl Joint Conf Neural Networks. 1
Elman JL. (1990). Finding structure in time Cognitive Science. 14
Feldkamp LA, Puskorius GV. (1998). A signal processing framework based on dynamical neural networks with application to problems in adaptation, filtering and classification IEEE Trans Neural Networks. 86
Georgiou GM, Koutsougeras C. (1992). Complex-domain backpropagation IEEE Trans Circuits And Systems (part II). 39
Haykin S. (1994). Neural Networks: A Comprehensive Foundation.
Haykin S, Leung H. (1991). The complex back propagation algorithm IEEE Trans Signal Process. 39
Hirose A. (1990). Continuous complex-valued back propagation learning Electronics Letters. 28
Kechriotis G, Manolakos ES. (1994). Training fully recurrent neural networks with complex weights IEEE Tran Circuits and Systems: Analog and Digital Signal Processing. 41
Kim T, Adali T. (2000). Fully complex backpropagation for constant envelope signal processing Proc. IEEE Workshop on Neural Networks for Signal Processing.
Kim T, Adali T. (2002). Universal approximation of fully complex feedforward neural networks Proc Intl Conf Acoustics, Speech, and Signal Processing. 1
Kim T, Adali T. (2003). Approximation by fully complex multilayer perceptrons. Neural computation. 15 [PubMed]
Li L, Haykin S. (1995). Nonlinear adaptive prediction of nonstationary signals IEEE Trans Signal Process. 43
Mandic DP, Chambers JA. (2001). Recurrent neural networks for prediction: Learning algorithms, architectures and stability.
Mandic DP, Gautama T, Hulle MMV. (2003). A non-parametric test for detecting the complex-valued nature of time series Knowledge-Based Intelligent Information and Engineering Systems: 7th Intl Conf.
Medsker LR, Jain L. (2000). Recurrent neural networks: Design and applications.
Narendra KS, Parthawthy K. (1990). Identification and control of dynamical systems using neural networks IEEE Trans Neural Networks. 1
Personnaz L, Dreyfus G, Nerrand O, Roussel-ragot P. (1993). Neural networks and non-linear adaptive filtering: Unifying concepts and new algorithms Neural Comput. 5
Principe JC, Euliano NR, Lefebvre WC. (2000). Neural and adaptive systems: Fundamentals through simulations.
Puskorius GV, Feldkamp LA. (1994). Neurocontrol of nonlinear dynamical systems with Kalman filter trained recurrent networks. IEEE transactions on neural networks. 5 [PubMed]
Tsoi AC, Back AD. (1994). Locally recurrent globally feedforward networks: a critical review of architectures. IEEE transactions on neural networks. 5 [PubMed]
Widrow B, Mccool J, Ball M. (1975). The complex LMS algorithm Proc IEEE. 63
Williams RJ. (1992). Training recurrent networks using the extended Kalman filter Proc IJCNN. 4
Zipser D, Williams RJ. (1989). A learning algorithm for continually running fully recurrent neural networks Neural Comput. 1
Goh SL, Mandic DP. (2007). An augmented extended Kalman filter algorithm for complex-valued recurrent neural networks. Neural computation. 19 [PubMed]