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Learning the Meanings of Function Words from Grounded Language Using a Visual Question Answering Model

Authors :
Eva Portelance
Michael C. Frank
Dan Jurafsky
Source :
Cognitive Science. 2024 48(5).
Publication Year :
2024

Abstract

Interpreting a seemingly simple function word like "or," "behind," or "more" can require logical, numerical, and relational reasoning. How are such words learned by children? Prior acquisition theories have often relied on positing a foundation of innate knowledge. Yet recent neural-network-based visual question answering models apparently can learn to use function words as part of answering questions about complex visual scenes. In this paper, we study what these models learn about function words, in the hope of better understanding how the meanings of these words can be learned by both models and children. We show that recurrent models trained on visually grounded language learn gradient semantics for function words requiring spatial and numerical reasoning. Furthermore, we find that these models can learn the meanings of logical connectives and and or without any prior knowledge of logical reasoning as well as early evidence that they are sensitive to alternative expressions when interpreting language. Finally, we show that word learning difficulty is dependent on the frequency of models' input. Our findings offer proof-of-concept evidence that it is possible to learn the nuanced interpretations of function words in a visually grounded context by using non-symbolic general statistical learning algorithms, without any prior knowledge of linguistic meaning.

Details

Language :
English
ISSN :
0364-0213 and 1551-6709
Volume :
48
Issue :
5
Database :
ERIC
Journal :
Cognitive Science
Notes :
https://github.com/evaportelance/vqa-function-word-learning
Publication Type :
Academic Journal
Accession number :
EJ1427062
Document Type :
Journal Articles<br />Reports - Research
Full Text :
https://doi.org/10.1111/cogs.13448