A neural network model of object semantic representation is used to simulate learning of new words from a foreign language. The network consists of feature areas, devoted to description of object properties, and a lexical area, devoted to words representation. Neurons in the feature areas are implemented asWilson-Cowan oscillators, to allow segmentation of different simultaneous objects via gamma-band synchronization. Excitatory synapses among neurons in the feature and lexical areas are learned, during a training phase, via a Hebbian rule. In this work, we first assume that some words in the first language (L1) and the corresponding object representations are initially learned during a preliminary training phase. Subsequently, second-la...
We investigated how the language background (L1) of bilinguals influences the representation and use...
Recognition of objects, their representation and retrieval in memory and the link of this representa...
This thesis puts forward the view that a purely signal-based approach to natural language processing...
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 ...
We present an original model designed to study how a second language (L2) is acquired in bilinguals ...
This work presents a connectionist model of the semantic-lexical system. Model assumes that the lexi...
AbstractThis paper attempts to explore how neural network models can simulate word production in sec...
none3This work presents a connectionist model of the semantic-lexical system based on grounded cogni...
This work presents a connectionist model of the semantic-lexical system based on grounded cognition....
In this paper we present a self-organizing connectionist model of the acquisition of word meaning. O...
Several kinds of empirical evidence point to the existence of an asymmetry between linguistic produc...
The paper describes a neural network model of early language acquisition with an emphasis on how lan...
A review of empirical work suggests that the lexical representations of a bilingual’s two languages ...
Although research has now converged towards a consensus that both languages of a bilingual are repre...
We investigated how the language background (L1) of bilinguals influences the representation and use...
Recognition of objects, their representation and retrieval in memory and the link of this representa...
This thesis puts forward the view that a purely signal-based approach to natural language processing...
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 ...
We present an original model designed to study how a second language (L2) is acquired in bilinguals ...
This work presents a connectionist model of the semantic-lexical system. Model assumes that the lexi...
AbstractThis paper attempts to explore how neural network models can simulate word production in sec...
none3This work presents a connectionist model of the semantic-lexical system based on grounded cogni...
This work presents a connectionist model of the semantic-lexical system based on grounded cognition....
In this paper we present a self-organizing connectionist model of the acquisition of word meaning. O...
Several kinds of empirical evidence point to the existence of an asymmetry between linguistic produc...
The paper describes a neural network model of early language acquisition with an emphasis on how lan...
A review of empirical work suggests that the lexical representations of a bilingual’s two languages ...
Although research has now converged towards a consensus that both languages of a bilingual are repre...
We investigated how the language background (L1) of bilinguals influences the representation and use...
Recognition of objects, their representation and retrieval in memory and the link of this representa...
This thesis puts forward the view that a purely signal-based approach to natural language processing...