This paper describes a neural network account of misbehavior with an extant neural network model of conditioning. The model makes no distinction between learning (weight-change mechanisms) in operant and Pavlovian conditioning, but preserves the standard behavioral distinctions between types of stimuli, responses, and contingencies, with connectionist interpretations of some possible neuroanatomical substrates. Misbehavior has been traditionally conceived as a species-specific response R* that is unnecessary for a biologically significant reward S* but interferes with another response R that is necessary for S* . Misbehavior thus conceived has been expl...
This chapter presents an analysis of the distinction between operant (instrumental) and respondent (...
DAL SITO DELL'EDITORE: How can we make better sense of animal behavior by using what we know abou...
Uncovering brain-behavior mechanisms is the ultimate goal of neuroscience. A formidable amount of di...
This paper investigates the possible role of neuroanatomical features in Pavlovian conditioning, via...
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...
This paper investigates the possible role of neuroanatomical features in Pavlovian conditioning, via...
Revaluation refers to phenomena in which the strength of an operant is altered by reinforcer-related...
Traces the conceptual nervous system (CoNS) approach to the study of personality back to the ideas o...
Selective information processing in neural networks is studied through computer simulations of Pavlo...
We evaluate the ability of artificial neural network models (multi-layer perceptrons) to predict sti...
In their account of learning and behavior, the authors define an interactor as emitted behavior that...
A neural model is presented that explains how outcome-specific learning modulates affect, decision-m...
This dissertation focuses on the biological structures that allow animals to exhibit classical condi...
A central problem in cognitive neuroscience is how animals can manage to rapidly master complex sens...
This chapter presents an analysis of the distinction between operant (instrumental) and respondent (...
DAL SITO DELL'EDITORE: How can we make better sense of animal behavior by using what we know abou...
Uncovering brain-behavior mechanisms is the ultimate goal of neuroscience. A formidable amount of di...
This paper investigates the possible role of neuroanatomical features in Pavlovian conditioning, via...
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...
This paper investigates the possible role of neuroanatomical features in Pavlovian conditioning, via...
Revaluation refers to phenomena in which the strength of an operant is altered by reinforcer-related...
Traces the conceptual nervous system (CoNS) approach to the study of personality back to the ideas o...
Selective information processing in neural networks is studied through computer simulations of Pavlo...
We evaluate the ability of artificial neural network models (multi-layer perceptrons) to predict sti...
In their account of learning and behavior, the authors define an interactor as emitted behavior that...
A neural model is presented that explains how outcome-specific learning modulates affect, decision-m...
This dissertation focuses on the biological structures that allow animals to exhibit classical condi...
A central problem in cognitive neuroscience is how animals can manage to rapidly master complex sens...
This chapter presents an analysis of the distinction between operant (instrumental) and respondent (...
DAL SITO DELL'EDITORE: How can we make better sense of animal behavior by using what we know abou...
Uncovering brain-behavior mechanisms is the ultimate goal of neuroscience. A formidable amount of di...