This paper investigates the possible role of neuroanatomical features in Pavlovian conditioning, via computer simulations with layered, feedforward artificial neural networks. The networks' structure and functioning are described by a strongly bottom-up model that takes into account the roles of hippocampal and dopaminergic systems in conditioning. Neuroanatomical features were simulated as generic structural or architectural features of neural networks. We focused on the number of units per hidden layer and connectivity. The effect of the number of units per hidden layer was investigated through simulations of resistance to extinction in fully connected networks. Large networks were more resistant to extinction than small networks, a stoch...
International audienceRecent technical advances in neuroscience give a more precise view of the inne...
Pavlovian conditioning is the process by which we learn relationships between stimuli and thus const...
We evaluate the ability of artificial neural network models (multi-layer perceptrons) to predict sti...
This paper investigates the possible role of neuroanatomical features in Pavlovian conditioning, via...
Selective information processing in neural networks is studied through computer simulations of Pavlo...
This paper describes simulations of two context-dependence phenomena in Pavlovian conditioning, usin...
International audienceArtificial Neural Networks are often used as black boxes to implement behavior...
The present work initiates a research line in the study of artificial life, through a preliminary ch...
Abstract: The basic assumptions of the present contribution are the following: i) a satisfactory mec...
This paper describes a neural network account of misbehavior with an extant neural network model of ...
Some existing models of hippocampal function simulate performance in classical conditioning tasks us...
Fear conditioning is a successful paradigm for studying neural substrates of emotional learning. In ...
How memory is organized within neural networks is a fundamental question in neuroscience. We used Pa...
Current knowledge on the neuronal substrates of Pavlovian conditioning in animals and man is briefly...
This dissertation focuses on the biological structures that allow animals to exhibit classical condi...
International audienceRecent technical advances in neuroscience give a more precise view of the inne...
Pavlovian conditioning is the process by which we learn relationships between stimuli and thus const...
We evaluate the ability of artificial neural network models (multi-layer perceptrons) to predict sti...
This paper investigates the possible role of neuroanatomical features in Pavlovian conditioning, via...
Selective information processing in neural networks is studied through computer simulations of Pavlo...
This paper describes simulations of two context-dependence phenomena in Pavlovian conditioning, usin...
International audienceArtificial Neural Networks are often used as black boxes to implement behavior...
The present work initiates a research line in the study of artificial life, through a preliminary ch...
Abstract: The basic assumptions of the present contribution are the following: i) a satisfactory mec...
This paper describes a neural network account of misbehavior with an extant neural network model of ...
Some existing models of hippocampal function simulate performance in classical conditioning tasks us...
Fear conditioning is a successful paradigm for studying neural substrates of emotional learning. In ...
How memory is organized within neural networks is a fundamental question in neuroscience. We used Pa...
Current knowledge on the neuronal substrates of Pavlovian conditioning in animals and man is briefly...
This dissertation focuses on the biological structures that allow animals to exhibit classical condi...
International audienceRecent technical advances in neuroscience give a more precise view of the inne...
Pavlovian conditioning is the process by which we learn relationships between stimuli and thus const...
We evaluate the ability of artificial neural network models (multi-layer perceptrons) to predict sti...