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Paper:
Language: English:

Self-organization in Cortical Maps & EM-learning


Francesco Frisone, Pietro G. Morasso, and Luca Perico


University of Genova, Dept. of Informatics, Systems, lecommunications Via Opera Pia 13, 16145 Genova (IT)


Received: April 28, 1998

Accepted: August 29, 1998


Keywords: Self-organization, Hebbian learning, Cortical maps, Population code, EM-learning

Journal ref: Journal of Advanced Computational Intelligence and Intelligent Informatics, Vol.2, No.6 pp. 178-184, 1998

Abstract



Starting from the problem of density estimation, it is shown that Expectation Maximization (EM) learning can be considered a Hebbian mechanism. From this, it is possible to outline a theory of self-organization of cortical maps, which is based on a well-defined optimization process and preserves biologically desirable characteristics such as local computation and uniform treatment of input and lateral connections. A thalamocortical network is described that implements the theory in a fully distributed manner: it uses cortical dynamics for the E-step and Hebbian adaptation of cortico-cortical connections at steady state for the M-step.
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