This work presents a connectionist model of the semantic-lexical system based on grounded cognition. The model assumes that the lexical and semantic aspects of language are memorized in two distinct stores. The semantic properties of objects are represented as a collection of features, whose number may vary among objects. Features are described as activation of neural oscillators in different sensory-motor areas (one area for each feature) topographically organized to implement a similarity principle. Lexical items are represented as activation of neural groups in a different layer.Lexical and semantic aspects are then linked together on the basis of previous experience, using physiological learning mechanisms. After training, features whic...
I will highlight a neural architecture that we developed to simulate and explain cortical correlates...
This thesis puts forward the view that a purely signal-based approach to natural language processing...
Abstract word learning and comprehension is a very crucial and important issue because of its applic...
This work presents a connectionist model of the semantic-lexical system based on grounded cognition....
This work presents a connectionist model of the semantic-lexical system. Model assumes that the lexi...
Recognition of objects, their representation and retrieval in memory and the link of this representa...
Previous neurocomputational work has addressed the question why and how many cortical areas contribu...
In much of neuroimaging and neuropsychology, regions of the brain have been associated with ‘lexical...
According with a featural organization of semantic memory, this work is aimed at investigating, thro...
A neural network model of object semantic representation is used to simulate learning of new words f...
none3A neural network model of object semantic representation, developed in previous years, is used ...
An important issue in lexical-semantic memory models is the formation of categories and taxonomies, ...
This thesis addresses the computation and organization of conceptual knowledge. Specifically, it foc...
Human lexical knowledge does not appear to be organised to minimise storage, but rather to maximise ...
AbstractNeuroimaging and patient studies show that different areas of cortex respectively specialize...
I will highlight a neural architecture that we developed to simulate and explain cortical correlates...
This thesis puts forward the view that a purely signal-based approach to natural language processing...
Abstract word learning and comprehension is a very crucial and important issue because of its applic...
This work presents a connectionist model of the semantic-lexical system based on grounded cognition....
This work presents a connectionist model of the semantic-lexical system. Model assumes that the lexi...
Recognition of objects, their representation and retrieval in memory and the link of this representa...
Previous neurocomputational work has addressed the question why and how many cortical areas contribu...
In much of neuroimaging and neuropsychology, regions of the brain have been associated with ‘lexical...
According with a featural organization of semantic memory, this work is aimed at investigating, thro...
A neural network model of object semantic representation is used to simulate learning of new words f...
none3A neural network model of object semantic representation, developed in previous years, is used ...
An important issue in lexical-semantic memory models is the formation of categories and taxonomies, ...
This thesis addresses the computation and organization of conceptual knowledge. Specifically, it foc...
Human lexical knowledge does not appear to be organised to minimise storage, but rather to maximise ...
AbstractNeuroimaging and patient studies show that different areas of cortex respectively specialize...
I will highlight a neural architecture that we developed to simulate and explain cortical correlates...
This thesis puts forward the view that a purely signal-based approach to natural language processing...
Abstract word learning and comprehension is a very crucial and important issue because of its applic...