International audienceArtificial Neural Networks are very efficient adaptive models but one of their recognized weaknesses is about information representation, often carried out in an input vector without a structure. Beyond the classical elaboration of a hierarchical representation in a series of layers, we report here inspiration from neuroscience and argue for the design of heterogenous neural networks, processing information at feature, configuration and history levels of granularity, and interacting very efficiently for high-level and complex decision making. This framework is built from known characteristics of the sensory cortex, the hippocampus and the prefrontal cortex and is exemplified here in the case of pavlovian conditioning, ...
We study the synthesis of neural coding, selective attention and percep- tual decision making. A hie...
Cognitive and behavioral processes are indissociable from their biophysical substrateand the charact...
A central problem to understanding intelligence is the concept of generalisation. This allows previo...
International audienceArtificial Neural Networks are very efficient adaptive models but one of their...
Selective information processing in neural networks is studied through computer simulations of Pavlo...
International audienceAlong evolution, increasingly complex cognitive functions have been attributed...
There has been a long tradition of casting models of information processing which entail elementary ...
Abstract. Many different neural models have been proposed to account for major characteristics of th...
ABSTRACT Cognitive functions arise from the coordinated activity of neural populations distributed o...
Present neural models of classical conditioning all suffer from the same shortcoming: local represen...
Computational neuroscience is in the midst of constructing a new framework for understanding the bra...
Representations are internal models of the environment that can provide guidance to a behaving agent...
In the last few years, major milestones have been achieved in the field of artificial intelligence a...
Computational neuroscience provides a way to bridge from the anatomical and neurophysiological prope...
Many cognitive functions are thought to rely on higher brain regions, in particular the prefrontal c...
We study the synthesis of neural coding, selective attention and percep- tual decision making. A hie...
Cognitive and behavioral processes are indissociable from their biophysical substrateand the charact...
A central problem to understanding intelligence is the concept of generalisation. This allows previo...
International audienceArtificial Neural Networks are very efficient adaptive models but one of their...
Selective information processing in neural networks is studied through computer simulations of Pavlo...
International audienceAlong evolution, increasingly complex cognitive functions have been attributed...
There has been a long tradition of casting models of information processing which entail elementary ...
Abstract. Many different neural models have been proposed to account for major characteristics of th...
ABSTRACT Cognitive functions arise from the coordinated activity of neural populations distributed o...
Present neural models of classical conditioning all suffer from the same shortcoming: local represen...
Computational neuroscience is in the midst of constructing a new framework for understanding the bra...
Representations are internal models of the environment that can provide guidance to a behaving agent...
In the last few years, major milestones have been achieved in the field of artificial intelligence a...
Computational neuroscience provides a way to bridge from the anatomical and neurophysiological prope...
Many cognitive functions are thought to rely on higher brain regions, in particular the prefrontal c...
We study the synthesis of neural coding, selective attention and percep- tual decision making. A hie...
Cognitive and behavioral processes are indissociable from their biophysical substrateand the charact...
A central problem to understanding intelligence is the concept of generalisation. This allows previo...