Learning the meanings of words requires coping with referential uncertainty – a learner hearing a novel word cannot be sure which aspects or properties of the referred object or event comprise the meaning of the word. Data from developmental psychology suggest that human learners grasp the important aspects of many novel words after just a few exposures, a phenomenon known as fast mapping. Traditionally, word learning is viewed as a mapping task, in which the learner has to map a set of forms onto a set of pre-existing concepts. We criticise this approach and argue instead for a flexible nature of the coupling between form and meanings as a solution to the problem of referential uncertainty. We implemented and tested the model in population...
Abstract—We address the problem of bootstrapping language acquisition for an artificial system simil...
AbstractTWIG (“Transportable Word Intension Generator”) is a system that allows a robot to learn com...
The paper reports on experiments with a population of visually grounded robotic agents capable of bo...
The development of machines capable of natural linguistic interaction with humans has been an active...
International audienceWe explore the way that the flexibility inherent in the lexicon might be incor...
Children learn word meanings by making use of commonalities across the usages of a word in different...
In this thesis, an effective approach for predicting nouns, adjectives and verbs is introduced for m...
Languages change over time, as new words are invented, old words are lost through disuse, and the me...
Modelling the way word meanings dynamically function and combine in communicative contexts, evolve ...
One of the hardest problems in science is the symbol grounding problem, a question that has intrigue...
This paper presents a robust methodology for grounding vocabulary in robots. A social language groun...
It is well-established that toddlers can correctly select a novel referent from an ambiguous array i...
This paper presents a cognitive robotics model for the study of the embodied representation of actio...
People use language to exchange ideas and influence the actions of others through shared conceptions...
For robots to effectively bootstrap the acquisition of language, they must handle referential uncert...
Abstract—We address the problem of bootstrapping language acquisition for an artificial system simil...
AbstractTWIG (“Transportable Word Intension Generator”) is a system that allows a robot to learn com...
The paper reports on experiments with a population of visually grounded robotic agents capable of bo...
The development of machines capable of natural linguistic interaction with humans has been an active...
International audienceWe explore the way that the flexibility inherent in the lexicon might be incor...
Children learn word meanings by making use of commonalities across the usages of a word in different...
In this thesis, an effective approach for predicting nouns, adjectives and verbs is introduced for m...
Languages change over time, as new words are invented, old words are lost through disuse, and the me...
Modelling the way word meanings dynamically function and combine in communicative contexts, evolve ...
One of the hardest problems in science is the symbol grounding problem, a question that has intrigue...
This paper presents a robust methodology for grounding vocabulary in robots. A social language groun...
It is well-established that toddlers can correctly select a novel referent from an ambiguous array i...
This paper presents a cognitive robotics model for the study of the embodied representation of actio...
People use language to exchange ideas and influence the actions of others through shared conceptions...
For robots to effectively bootstrap the acquisition of language, they must handle referential uncert...
Abstract—We address the problem of bootstrapping language acquisition for an artificial system simil...
AbstractTWIG (“Transportable Word Intension Generator”) is a system that allows a robot to learn com...
The paper reports on experiments with a population of visually grounded robotic agents capable of bo...