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Article

Coherent Infomax as a Computational Goal for Neural Systems

Details

Citation

Kay JW & Phillips W (2011) Coherent Infomax as a Computational Goal for Neural Systems. Bulletin of Mathematical Biology, 73 (2), pp. 344-372. https://doi.org/10.1007/s11538-010-9564-x

Abstract
Signal processing in the cerebral cortex is thought to involve a common multi-purpose algorithm embodied in a canonical cortical micro-circuit that is replicated many times over both within and across cortical regions. Operation of this algorithm produces widely distributed but coherent and relevant patterns of activity. The theory of Coherent Infomax provides a formal specification of the objectives of such an algorithm. It also formally derives specifications for both the short-term processing dynamics and for the learning rules whereby the connection strengths between units in the network can be adapted to the environment in which the system finds itself. A central assumption of the theory is that the local processors can combine reliable signal coding with flexible use of those codes because they have two classes of synaptic connection: driving connections which specify the information content of the neural signals, and contextual connections which modulate that signal processing. Here, we make the biological relevance of this theory more explicit by putting more emphasis upon the contextual guidance of ongoing processing, by showing that Coherent Infomax is consistent with a particular Bayesian interpretation for the contextual guidance of learning and processing, by explicitly specifying rules for on-line learning, and by suggesting approximations by which the learning rules can be made computationally feasible within systems composed of very many local processors.

Keywords
Neural networks; Coherent Infomax; Dynamic coordination; Contextual modulation; Learning rules; Synaptic plasticity; Bayesian analysis; Neural coding; Information theory

Journal
Bulletin of Mathematical Biology: Volume 73, Issue 2

StatusPublished
Publication date28/02/2011
URL
PublisherSpringer
ISSN0092-8240
eISSN1522-9602

People (1)

Professor Bill Phillips

Professor Bill Phillips

Emeritus Professor, Psychology