Open Access
Learning French Liaison with Gradient Symbolic Representations: Errors, Predictions, Consequences
Author(s) -
Anne-Michelle Tessier,
Karen Jesney
Publication year - 2021
Publication title -
proceedings of the annual meetings on phonology
Language(s) - English
Resource type - Journals
ISSN - 2377-3324
DOI - 10.3765/amp.v9i0.4940
Subject(s) - collocation (remote sensing) , linguistics , word (group theory) , grammar , computer science , cryptographic nonce , natural language processing , psychology , cognitive psychology , artificial intelligence , machine learning , philosophy , encryption , operating system
Smolensky & Goldrick (2016) first made the case for Gradient Symbolic Representations (GSRs) as the inputs to phonological grammar using the phenomena of French liaison. Under this view, many common French words are stored underlyingly with partially-activated word-final consonants, and others with gradient blends of partially-activated word-initial consonants. In this paper, we follow up some of that view's predictions and consequences, focusing on the acquisition of French liaison using GSRs. We compare our simulations of error-driven GSR learning with observed errors made by French-learning children, and find the results to be encouragingly similar. We also compare predictions about the end state of GSR learning with a pilot study reporting adult French speakers' use of liaison in nonce words, where we find a rather less good explanatory fit. The paper emphasizes the role of word and collocation frequency in the development of phonological patterns by a GSR learner, and outlines many future avenues for research.