How does linguistic context influence word learning?
Source
Journal of Child Language, 50, 6, (2023), pp. 1374-1393ISSN
Publication type
Article / Letter to editor
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Organization
SW OZ DCC PL
Journal title
Journal of Child Language
Volume
vol. 50
Issue
iss. 6
Languages used
English (eng)
Page start
p. 1374
Page end
p. 1393
Subject
PsycholinguisticsAbstract
While there are well-known demonstrations that children can use distributional information to acquire multiple components of language, the underpinnings of these achievements are unclear. In the current paper, we investigate the potential pre-requisites for a distributional learning model that can explain how children learn their first words. We review existing literature and then present the results of a series of computational simulations with Vector Space Models, a type of distributional semantic model used in Computational Linguistics, which we evaluate against vocabulary acquisition data from children. We focus on nouns and verbs, and we find that: (i) a model with flexibility to adjust for the frequency of events provides a better fit to the human data, (ii) the influence of context words is very local, especially for nouns, and (iii) words that share more contexts with other words are harder to learn.
This item appears in the following Collection(s)
- Academic publications [246515]
- Electronic publications [134102]
- Faculty of Social Sciences [30494]
- Open Access publications [107627]
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