NEURAL-NETWORK MODELS OF CORTICAL FUNCTIONS BASED ON THE COMPUTATIONAL PROPERTIES OF THE CEREBRAL-CORTEX

被引:13
|
作者
GUIGON, E
GRANDGUILLAUME, P
OTTO, I
BOUTKHIL, L
BURNOD, Y
机构
[1] INSERM CREARE, Université Pierre et Marie Curie, 75005 Paris, Boite 23, 9, quai Saint-Bernard
关键词
NEURAL MODELING; CEREBRAL CORTEX; CORTICAL COLUMN; LEARNING; SENSORIMOTOR PROGRAMS;
D O I
10.1016/0928-4257(94)90010-8
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
We describe a biologically plausible modelling framework based on the architectural and processing characteristics of the cerebral cortex. Its key feature is a multicellular processing unit (cortical column) reflecting the modular nature of cortical organization and function. In this framework, we describe a neural network model of the neuronal circuits of the cerebral cortex that learn different functions associated with different parts of the cortex: 1) visual integration for invariant pattern recognition, performed by a cooperation between temporal and parietal areas; 2) visual-to-motor transformation for 3D arm reaching movements, performed by parietal and motor areas; and 3) temporal integration and storage of sensorimotor programs, performed by networks linking the prefrontal cortex to associative sensory and motor areas. The architecture of the network is inspired from the features of the architecture of cortical pathways involved in these functions. We propose two rules which describe neural processing and plasticity in the network. The first rule (adaptive tuning if gating) is an analog of operant conditioning and permits to learn to anticipate an action. The second rule (adaptive timing) is based on a bistable state of activity and permits to learn temporally separate events forming a behavioral sequence.
引用
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页码:291 / 308
页数:18
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