The capacity of convergence-zone episodic memory

Human episodic memory provides a seemingly unlimited storage for everyday experiences, and a retrieval system that allows us to access the experiences with partial activation of their components. This paper presents a computational model of episodic memory inspired by Damasio's idea of convergence zones. The model consists of a layer of perceptual feature maps and a binding layer. A perceptual feature pattern is coarse coded in the binding layer, and stored on the weights between layers. A partial activation of the stored features activates the binding pattern which in turn reactivates the entire stored pattern. A worst-case analysis shows that with realistic-size layers, the memory capacity of the model is several times larger than the number of units in the model, and could account for the large capacity of human episodic memory.<<ETX>>

[1]  F. Attneave,et al.  The Organization of Behavior: A Neuropsychological Theory , 1949 .

[2]  E. Kandel Nerve cells and behavior. , 1970, Scientific American.

[3]  E. Tulving,et al.  Episodic and semantic memory , 1972 .

[4]  J J Hopfield,et al.  Neural networks and physical systems with emergent collective computational abilities. , 1982, Proceedings of the National Academy of Sciences of the United States of America.

[5]  E. Tulving Elements of episodic memory , 1983 .

[6]  Santosh S. Venkatesh,et al.  The capacity of the Hopfield associative memory , 1987, IEEE Trans. Inf. Theory.

[7]  Geoffrey E. Hinton,et al.  A Distributed Connectionist Production System , 1988, Cogn. Sci..

[8]  J. Keeler Comparison Between Kanerva's SDM and Hopfield-Type Neural Networks , 1988, Cogn. Sci..

[9]  Pentti Kanerva,et al.  Sparse Distributed Memory , 1988 .

[10]  A. Damasio Time-locked multiregional retroactivation: A systems-level proposal for the neural substrates of recall and recognition , 1989, Cognition.

[11]  T. Sejnowski,et al.  Brain and cognition , 1989 .

[12]  Antonio R. Damasio,et al.  The Brain Binds Entities and Events by Multiregional Activation from Convergence Zones , 1989, Neural Computation.

[13]  Anders Krogh,et al.  Introduction to the theory of neural computation , 1994, The advanced book program.

[14]  E. Capaldi,et al.  The organization of behavior. , 1992, Journal of applied behavior analysis.

[15]  Noga Alon,et al.  The Probabilistic Method , 2015, Fundamentals of Ramsey Theory.

[16]  Kenneth D. Miller,et al.  The Role of Constraints in Hebbian Learning , 1994, Neural Computation.