Barto AG, Sutton RS. (2002). Reinforcement learning: An introduction (2nd ed).
Bengio Y, Simard P, Frasconi P. (1994). Learning long-term dependencies with gradient descent is difficult. IEEE transactions on neural networks. 5 [PubMed]
Blair A, Pollack J. (1997). Analysis of dynamical recognizers Neural Comput. 9
Boden M, Wiles J. (2000). Context-free and context-sensitive dynamics in recurrent neural networks Connection Science. 12
Carandini M, Heeger DJ. (1994). Summation and division by neurons in primate visual cortex. Science (New York, N.Y.). 264 [PubMed]
Christiansen MH, Chater N. (1999). Toward a connectionist model of recursion in human linguistic performance Cogn Scien. 23
Christiansen MH, Chater N. (1999). Connectionist natural language processing: The state of the art Cogn Sci. 28
Cover TM, Thomas JA. (1991). Elements of Information Theory.
Crutchfield JP. (1994). The calculi of emergence: Computation, dynamics, and induction Physica D. 75
Elman JL. (1990). Finding structure in time Cognitive Science. 14
Felleman DJ, Van Essen DC. (1991). Distributed hierarchical processing in the primate cerebral cortex. Cerebral cortex (New York, N.Y. : 1991). 1 [PubMed]
Gruning A. (2004). Neural networks and the complexity of languages Unpublished doctoral dissertation, University of Leipzig.
Gruning A. (2005). Back-propagation as reinforcement in prediction tasks Proc Intl Conf Artificial Neural Networks.
Gruning A. (2006). Stack- and queue-like dynamics in recurrent neural networks Connection Science. 18
Hammer B, Tino P. (2003). Recurrent neural networks with small weights implement definite memory machines Neural Comput. 15
Hochreiter S, Schmidhuber J. (1997). Long short-term memory. Neural computation. 9 [PubMed]
Hopcroft J, Ullman J. (1979). Introduction to automata theory, languages, and computation.
Hornik K, White H, Kuan CM. (1994). A convergence result for learning in recurrent neural networks Neural Comput. 6
Humphreys G, Ellis R. (1999). Connectionist psychology.
Jackendoff R. (2002). Foundations Of Language: Brain, Meaning, Grammar, Evolution.
Jacobsson H. (2006). The crystallizing substochastic sequential machine extractor: CrySSMEx. Neural computation. 18 [PubMed]
Kitchens BP. (1998). Symbolic dynamics.
Lind D, Marcus B. (1995). An introduction to symbolic dynamics and coding.
Maida AS, Rowland BA, Berkeley ISN. (2006). Synaptic noise as a means of implementing weight-perturbation learning Connection Science. 18
Mcclelland JL, Servan-Schreiber D, Cleeremans A. (1989). Finite state automata and simple recurrent networks Neural Comput. 1
Moore C. (1998). Dynamical recognizers: Real-time language recognition by analog computers Theoretical Computer Science. 201
Nowlan SJ, Sejnowski TJ. (1995). A selection model for motion processing in area MT of primates. The Journal of neuroscience : the official journal of the Society for Neuroscience. 15 [PubMed]
Reber A. (1967). Implicit learning of artificial grammars J Verbal Learn Verbal Behav. 77
Rodriguez P. (2001). Simple recurrent networks learn context-free and context-sensitive languages by counting. Neural computation. 13 [PubMed]
Roelfsema PR, van Ooyen A. (2005). Attention-gated reinforcement learning of internal representations for classification. Neural computation. 17 [PubMed]
Schultz W. (1998). Predictive reward signal of dopamine neurons. Journal of neurophysiology. 80 [PubMed]
Tino P, Cernanský M, Benusková L. (2004). Markovian architectural bias of recurrent neural networks. IEEE transactions on neural networks. 15 [PubMed]
Tino P, Dorffner G. (2001). Predicting the future of discrete sequences from fractal representations of the past Mach Learn. 45
Tremblay L, Schultz W. (1999). Relative reward preference in primate orbitofrontal cortex. Nature. 398 [PubMed]
Usher M, McClelland JL. (2001). The time course of perceptual choice: the leaky, competing accumulator model. Psychological review. 108 [PubMed]
Williams RJ, Peng J. (1990). An efficient gradient-based algorithm for on-line training of recurrent network trajectories Neural Comput. 2
Wörgötter F, Porr B. (2005). Temporal sequence learning, prediction, and control: a review of different models and their relation to biological mechanisms. Neural computation. 17 [PubMed]
Zipser D, Williams RJ. (1989). A learning algorithm for continually running fully recurrent neural networks Neural Comput. 1
de Kamps M, van der Velde F. (2006). Neural blackboard architectures: the realization of compositionality and systematicity in neural networks. Journal of neural engineering. 3 [PubMed]