International audienceChildren learn the meaning of words and sentences in their native language at an impressive speed and from highly ambiguous input. To account for this learning, previous computational modeling has focused mainly on the study of perception-based mechanisms like cross-situational learning. However, children do not learn only by exposure to the input. As soon as they start to talk, they practice their knowledge in social interactions and they receive feedback from their caregivers. In this work, we propose a model integrating both perception-and production-based learning using artificial neural networks which we train on a large corpus of crowd-sourced images with corresponding descriptions. We found that production-based...
In this paper, we discuss a computational model that is able to detect and build word-like represent...
Language is about symbols and those symbols must be grounded in the physical environment during huma...
Young children, with no prior knowledge, learn word meanings from a highly noisy and ambiguous input...
International audienceChildren learn the meaning of words and sentences in their native language at ...
International audienceWhen learning their native language, children acquire the meanings of words an...
Children learn the meaning of words by being exposed to perceptually rich situations (linguistic dis...
Language acquisition by children and machines is remarkable. Yet while children learn from hearing a...
Comunicació presentada a: 2016 Conference of the North American Chapter of the Association for Compu...
Cross-situational learning and social pragmatic theories are prominent mechanisms for learning word ...
This article describes a biological neural network model that can be used to explain how children le...
The way humans learn the meaning of words is a fundamental question in many different disciplines an...
Cross-situational learning and social pragmatic theories are prominent mechanisms for learning word ...
The problem of how young learners acquire the meaning of words is fundamental to language developmen...
Words are the essence of communication: They are the building blocks of any language. Learning the m...
Neural networks, or the so-called connectionist networks, provide a basis for studying child languag...
In this paper, we discuss a computational model that is able to detect and build word-like represent...
Language is about symbols and those symbols must be grounded in the physical environment during huma...
Young children, with no prior knowledge, learn word meanings from a highly noisy and ambiguous input...
International audienceChildren learn the meaning of words and sentences in their native language at ...
International audienceWhen learning their native language, children acquire the meanings of words an...
Children learn the meaning of words by being exposed to perceptually rich situations (linguistic dis...
Language acquisition by children and machines is remarkable. Yet while children learn from hearing a...
Comunicació presentada a: 2016 Conference of the North American Chapter of the Association for Compu...
Cross-situational learning and social pragmatic theories are prominent mechanisms for learning word ...
This article describes a biological neural network model that can be used to explain how children le...
The way humans learn the meaning of words is a fundamental question in many different disciplines an...
Cross-situational learning and social pragmatic theories are prominent mechanisms for learning word ...
The problem of how young learners acquire the meaning of words is fundamental to language developmen...
Words are the essence of communication: They are the building blocks of any language. Learning the m...
Neural networks, or the so-called connectionist networks, provide a basis for studying child languag...
In this paper, we discuss a computational model that is able to detect and build word-like represent...
Language is about symbols and those symbols must be grounded in the physical environment during huma...
Young children, with no prior knowledge, learn word meanings from a highly noisy and ambiguous input...