Revisão bibliográfica redes neurais recorrentes



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362 -SLUG: A Connectionist Architecture for Inferring the Structure of Finite-State Environments

M. C. Mozer and J. Bachrach

Machine Learning, Vol. 7, Number 2/3, pp. 139-160, 1991.

Palavras-chave: architeture, finite state, connectionist



363 -Some developmental and additional biases in the contrast enhancement and short term memory of recurrent neural networks

S. Grossberg and D. Levine

Journal of Theoretical Biology, Vol. 53, pp. 341-380, Academic Press, Inc., 1975.

Palavras-chave: bias, memory, short term memory



364 -Some Observations on the Use of the Extended Kalman Filter as a Recurrent Network Learning Algorithm

R. J. Williams

Technical Report, Computer Science, Northeastern University, Number NU-CCS-92-1, 1992.

Palavras-chave: Kalman filter, learning, filter



365 -Second-Order Recurrent Neural Networks for Grammatical Inference

C. L. Giles and D. Chen and C. B. Miller and H. H. Chen and G. Z. Sun and Y. C. Lee

1991 IEEE INNS International Joint Conference on Neural Networks, Vol. II, pp. 273-281, IEEE Press, 1991.

Palavras-chave: grammar, second order neural net., inference



366 -Stability Properties of Labeling Recursive Auto-Associative Memory

A. Sperduti

IEEE Transactions on Neural Networks, 6(6), pp. 1452-1460, 1995.

Palavras-chave: stability, memory, auto associative



367 -Stable Encoding of Large Finite-State Automata in Recurrent Neural Networks with Sigmoid Discriminants

Christian W. Omlin and C. Lee Giles

Neural Computation, 8(4), pp. 675-696, 1996.

Palavras-chave: automata, sigmoid discriminamts, encoding



368 -Synaptic Noise in Dynamically-driven Recurrent Neural Networks: Convergence and Generalization

Kam Jim and C. L. Giles and B. G. Horne

Technical Report, Institute for Advanced Computer Studies, University of Maryland, Number UMIACS-TR-94-89 and CS-TR-3322, 1994.

Palavras-chave: synaptic noise, dynamic system, convergence



369 -Synaptic Noise in Dynamically-driven Recurrent Neural Networks: Convergence and Generalization

Kam Jim and C. L. Giles and B. G. Horne

IEEE Transactions on Neural Networks, 7(6), 1996.

Palavras-chave: synaptic noise, dynamic system, convergence



370 -Speech Dynamics and Recurrent Neural Networks

H. Bourlard and C. J. Wellekens

Proceedings ICASSP 89, 1989.

Palavras-chave:speech dynamics



371 -Training recurrent neural networks with temporal input encodings

C. W. Omlin and C. L. Giles and B. G. Horne and L. R. Leerink and T. Lin

IEEE International Conference on Neural Networks (ICNN'94), pp. 1267-1278, IEEE Press, 1994.

Palavras-chave: trainning, temporal encodings



372 -Training Second-Order Recurrent Neural Networks Using Hints

Christian W. Omlin and C. Lee Giles

Machine Learning -- Proc. of the 9th Int. Workshop, pp. 361-366, Morgan Kaufman, July 1992.

Palavras-chave: second-order alg., hints



373 -The Dynamics of Discrete-Time Computation, With Application to Recurrent Neural Networks and Finite State Machine Extraction

M. P. Casey

Neural Computation, 8(6), pp. 1135-1178, 1996.

Palavras-chave:discrete time, dynamic system



374 -The Induction of Dynamical Recognizers

J. B. Pollack

Machine Learning, Vol. 7, Number 2/3, pp. 227-252, 1991.

Palavras-chave: recognizers, dynamic system



375 -The Problem of Learning Long-Term Dependencies in Recurrent Networks

Y. Bengio and P. Frasconi and P. Simard

IEEE International Conference on Neural Networks, Vol. III, pp. 1183-1188, IEEE Press, 1993.

Palavras-chave: learning,



376 -Three Constructive Algorithms for Network Learning

Stephen I. Gallant

Proceedings, 8th Annual Conference of the Cognitive Science Society, pp. 652-660, 1986.

Palavras-chave: learning, construtive algorithm



377 -The Cascade-Correlation Learning Architecture

S. E. Fahlman

Advances in Neural Information Processing Systems 2, pp. 524-532, Morgan Kaufmann Publishers, 1990.

Palavras-chave: cascade correlation, learning, architeture



378 -Training Recurrent Neural Networks: Why and How? An Illustration in Dynamical Process Modeling

O. Nerrand and P. Roussel-Ragot and D. Urbani and L. Personnaz and G. Dreyfus

IEEE Transactions on Neural Networks, 5(2), pp. 178-184, March 1994.

Palavras-chave: training, dynamical process,



379 -Use of Recurrent Neural Networks for Bioprocess Identification in On-Line Optimization by Micro-Genetic Algorithms

M. N. Karim and S. L. Rivera

Proceedings of the American Control Conference, Vol. 3, pp. 1931-1932, American Automatic Control Council, 1992.

Palavras-chave: bioprocess, optimization, genetic , evolutionary



380 -Using Hints to Successfully Learn Context-Free Grammars with a Neural Network Pushdown Automaton

S. Das and C. L. Giles and G. Z. Sun

Advances in Neural Information Processing Systems 5, pp. 65-72, Morgan Kaufmann Publishers, 1993.

Palavras-chave: learning, grammar, automata



381 -Using knowledge-based neural networks to improve algorithms: Refining the Chou-Fasman algorithm for protein folding

R. Maclin and J. W. Shavlik

Machine Learning, Vol. 11, pp. 195-215, 1993.

Palavras-chave: Chou-Fasman algorithm, biomedic



382 -Using Recurrent Neural Networks for Adaptive Communication Channel Equalization

G. Kechriotis and E. Zervas and E. S. Manolakos

IEEE Transactions on Neural Networks, 5(2), pp. 267-278, March 1994.

Palavras-chave: communication, chanel equalization, adaptive system



383 -Using Recurrent Neural Networks to Learn the Structure of Interconnection Networks

M. W. Goudreau and C. L. Giles

Neural Networks, 8(5), pp. 793-804, 1995.

Palavras-chave: learning, training, connection



384 -What Connectionist Models Learn: Learning and Representation in Connectionist Networks

S. H. Hanson and D. J. Burr

Neural Networks: Theory and Applications, pp. 169-208, Academic Press, 1991.

Palavras-chave: models, learning, connectionist




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