Item does not contain fulltextA key strength of connectionist modelling is its ability to simulate both intact cognition and the behavioural effects of neural damage. We survey the literature, showing that models have been damaged in a variety of ways, e.g. by removing connections, by adding noise to connection weights, by scaling weights, by removing units and by adding noise to unit activations. While these different implementations of damage have often been assumed to be behaviourally equivalent, some theorists have made aetiological claims that rest on nonequivalence. They suggest that related deficits with different aetiologies might be accounted for by different forms of damage within a single model. We present two case studies that e...
Introduction A highly controversial issue concerning the neural implementation of cognition is the ...
This paper reviews the impact of connectionism upon our understanding of brain-damaged language perf...
Current understanding of the eects of damage on neural networks is rudi-mentary, even though such un...
A key strength of connectionist modelling is its ability to simulate both intact cognition and the ...
A key strength of connectionist modelling is its ability to simulate both intact cognition and the b...
A key strength of connectionist modelling is its ability to simulate both intact cognition and the b...
Connectionist techniques are increasingly being used to model cognitive function with a view to prov...
This paper reviews the contribution of connectionism to our understanding of behavioral changes in l...
Connectionist modeling offers a useful computational framework for exploring the nature of normal an...
Objectives: The authors utilize a model of activity-dependent neuronal plasticity to study the inter...
Neuropsychological models of cognitive functions and disorders are traditionally comprised of box-an...
We report simulations of Cohen, Dunbar and McClelland's (CDM) model of the Stroop effect showin...
Computational models offer tools for exploring the nature of human cognitive processes. In connectio...
We have studied the effect of various kinds of damaging that may occur in a neural network whose syn...
Cognitive developmental disorders cannot he properly understood without due attention to the develop...
Introduction A highly controversial issue concerning the neural implementation of cognition is the ...
This paper reviews the impact of connectionism upon our understanding of brain-damaged language perf...
Current understanding of the eects of damage on neural networks is rudi-mentary, even though such un...
A key strength of connectionist modelling is its ability to simulate both intact cognition and the ...
A key strength of connectionist modelling is its ability to simulate both intact cognition and the b...
A key strength of connectionist modelling is its ability to simulate both intact cognition and the b...
Connectionist techniques are increasingly being used to model cognitive function with a view to prov...
This paper reviews the contribution of connectionism to our understanding of behavioral changes in l...
Connectionist modeling offers a useful computational framework for exploring the nature of normal an...
Objectives: The authors utilize a model of activity-dependent neuronal plasticity to study the inter...
Neuropsychological models of cognitive functions and disorders are traditionally comprised of box-an...
We report simulations of Cohen, Dunbar and McClelland's (CDM) model of the Stroop effect showin...
Computational models offer tools for exploring the nature of human cognitive processes. In connectio...
We have studied the effect of various kinds of damaging that may occur in a neural network whose syn...
Cognitive developmental disorders cannot he properly understood without due attention to the develop...
Introduction A highly controversial issue concerning the neural implementation of cognition is the ...
This paper reviews the impact of connectionism upon our understanding of brain-damaged language perf...
Current understanding of the eects of damage on neural networks is rudi-mentary, even though such un...