Page 211 - Artificial Intelligence in the Age of Neural Networks and Brain Computing
P. 211
References 201
[44] D. Bullock, S. Grossberg, Neural dynamics of planned arm movements: emergent in-
variants and speed-accuracy properties during trajectory formation, Psychological Re-
view 95 (1988) 49e90.
[45] S. Grossberg, On the development of feature detectors in the visual cortex with appli-
cations to learning and reaction-diffusion systems, Biological Cybernetics 21 (1976a)
145e159.
[46] S. Grossberg, Adaptive pattern classification and universal recoding: parallel develop-
ment and coding of neural feature detectors, Biological Cybernetics 23 (1976b)
121e134.
[47] C. von der Malsburg, Self-organization of orientation sensitive cells in the striate cortex,
Kybernetik 14 (1973) 85e100.
[48] R. Perez, L. Glass, R. Shlaer, Development of specificity in the cat visual cortex, Journal
of Mathematical Biology 1 (1974) 275e288.
[49] H.R. Wilson, A synaptic model for spatial frequency adaptation, Journal of Theoretical
Biology 50 (1975) 327e352.
[50] S. Grossberg, Adaptive pattern classification and universal recoding: feedback, expec-
tation, olfaction, and illusions, Biological Cybernetics 23 (1976c) 187e202.
[51] G.A. Carpenter, S. Grossberg, A massively parallel architecture for a self-organizing
neural pattern recognition machine, Computer Vision, Graphics, and Image Processing
37 (1987) 54e115.
[52] J.J. Hopfield, Neural networks and physical systems with emergent collective computa-
tional abilities, Proceedings of the National Academy of Sciences 79 (1982) 2554e2558.
[53] W. Bechtel, Mental Mechanisms: Philosophical Perspectives on Cognitive
Neuroscience, Taylor & Francis, New York, 2008.
[54] P. Gaudiano, S. Grossberg, Vector associative maps: unsupervised real time error-based
learning and control of movement trajectories, Neural Networks 4 (1991) 147e183.
[55] P. Dayan, L.F. Abbott, Theoretical Neuroscience: Computational and Mathematical
Modeling of Neural Systems, MIT Press, Cambridge, MA, 2005.
[56] F.G. Ashby, S. He ´lie, A tutorial on computational cognitive neuroscience: modeling the
neurodynamics of cognition, Journal of Mathematical Psychology 55 (2011) 273e289.
[57] J.D. Cohen, K. Dunbar, J.L. McClelland, On the control of automatic processes: a parallel
distributed processing account of the Stroop effect, Psychological Review 97 (1990)
332e361.
[58] J.D. Cohen, D. Servan-Schreiber, Context, cortex and dopamine: a connectionist
approach to behavior and biology in schizophrenia, Psychological Review 99 (1992)
45e77.
[59] R.C. O’Reilly, Biologically plausible error-driven learning using local activation
differences: the Generalized Recirculation Algorithm, Neural Computation 8
(1996) 895e938.
[60] R.C. O’Reilly, Six principles for biologically based computational models of cortical
cognition, Trends in Cognitive Sciences 2 (1998) 455e462.
[61] M.J. Frank, B. Loughry, R.C. O’Reilly, Interactions between the frontal cortex and basal
ganglia in working memory: a computational model, Cognitive, Affective, and Behav-
ioral Neuroscience 1 (2001) 137e160.
[62] R.C. O’Reilly, M.J. Frank, Making working memory work: a computational model of
learning in the prefrontal cortex and basal ganglia, Neural Computation 18 (2006)
283e328.