Present neural models of classical conditioning all suffer from the same shortcoming: local representation of information (therefore, very precise neural prewiring is necessary). As an alternative we develop two neural models of classical conditioning which rely on distributed representations of information. Both models are of the Hopfield type. In the first model the existence of transmission delays is used to store temporal relations. The second model is based on interactions between spatially separated neural fields. Using tools from statistical mechanics we show that behavioural constraints can be met only if the Hebb rule is extended with inter- or intrasynaptic competition. 2 3 1. Introduction Connectionism has redirected the attent...
This paper investigates the possible role of neuroanatomical features in Pavlovian conditioning, via...
International audienceArtificial Neural Networks are very efficient adaptive models but one of their...
© 2014 Dr. Robert Roy KerrA fundamental goal of neuroscience is to understand how the brain encodes ...
This dissertation focuses on the biological structures that allow animals to exhibit classical condi...
Selective information processing in neural networks is studied through computer simulations of Pavlo...
Learning and representing and reasoning about temporal relations, particularly causal relations, is ...
Cognitive Science is at a crossroad. Since its inception, the prevailing paradigm in Cognitive Scien...
Some existing models of hippocampal function simulate performance in classical conditioning tasks us...
The history of classical conditioning is summarized. The contributions and weaknesses of several ear...
Without learning we would be limited to a set of preprogrammed behaviours. While that may be accepta...
Abstract. Learning processes allow the central nervous system to learn relationships between stimuli...
Neural Networks may be made much faster and more efficient by reducing the amount of memory and comp...
Connectionism's main contribution to cognitive science will prove to be the renewed impetus it has i...
12&.. O•ITN-UW, IAVAILAINY STATIEMINT '121 oTI0mmUTM cmo' Approved for public release;...
An important source of evidence concerning rapid adaptation and learn-ing in the brain is the phenom...
This paper investigates the possible role of neuroanatomical features in Pavlovian conditioning, via...
International audienceArtificial Neural Networks are very efficient adaptive models but one of their...
© 2014 Dr. Robert Roy KerrA fundamental goal of neuroscience is to understand how the brain encodes ...
This dissertation focuses on the biological structures that allow animals to exhibit classical condi...
Selective information processing in neural networks is studied through computer simulations of Pavlo...
Learning and representing and reasoning about temporal relations, particularly causal relations, is ...
Cognitive Science is at a crossroad. Since its inception, the prevailing paradigm in Cognitive Scien...
Some existing models of hippocampal function simulate performance in classical conditioning tasks us...
The history of classical conditioning is summarized. The contributions and weaknesses of several ear...
Without learning we would be limited to a set of preprogrammed behaviours. While that may be accepta...
Abstract. Learning processes allow the central nervous system to learn relationships between stimuli...
Neural Networks may be made much faster and more efficient by reducing the amount of memory and comp...
Connectionism's main contribution to cognitive science will prove to be the renewed impetus it has i...
12&.. O•ITN-UW, IAVAILAINY STATIEMINT '121 oTI0mmUTM cmo' Approved for public release;...
An important source of evidence concerning rapid adaptation and learn-ing in the brain is the phenom...
This paper investigates the possible role of neuroanatomical features in Pavlovian conditioning, via...
International audienceArtificial Neural Networks are very efficient adaptive models but one of their...
© 2014 Dr. Robert Roy KerrA fundamental goal of neuroscience is to understand how the brain encodes ...