Part of Advances in Neural Information Processing Systems 7 (NIPS 1994)
Bill Horne, C. Giles
Many different discrete-time recurrent neural network architec(cid:173) tures have been proposed. However, there has been virtually no effort to compare these arch:tectures experimentally. In this paper we review and categorize many of these architectures and compare how they perform on various classes of simple problems including grammatical inference and nonlinear system identification.