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Sentence-Based Attentional Mechanisms in Word Learning: Evidence from a Computational Model

When looking for the referents of novel nouns, adults and young children are sensitive to cross-situational statistics (Yu and Smith, 2007; Smith and Yu, 2008). In addition, the linguistic context that a word appears in has been shown to act as a powerful attention mechanism for guiding sentence pro...

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Autores principales: Alishahi, Afra, Fazly, Afsaneh, Koehne, Judith, Crocker, Matthew W.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Research Foundation 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3387725/
https://www.ncbi.nlm.nih.gov/pubmed/22783211
http://dx.doi.org/10.3389/fpsyg.2012.00200
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author Alishahi, Afra
Fazly, Afsaneh
Koehne, Judith
Crocker, Matthew W.
author_facet Alishahi, Afra
Fazly, Afsaneh
Koehne, Judith
Crocker, Matthew W.
author_sort Alishahi, Afra
collection PubMed
description When looking for the referents of novel nouns, adults and young children are sensitive to cross-situational statistics (Yu and Smith, 2007; Smith and Yu, 2008). In addition, the linguistic context that a word appears in has been shown to act as a powerful attention mechanism for guiding sentence processing and word learning (Landau and Gleitman, 1985; Altmann and Kamide, 1999; Kako and Trueswell, 2000). Koehne and Crocker (2010, 2011) investigate the interaction between cross-situational evidence and guidance from the sentential context in an adult language learning scenario. Their studies reveal that these learning mechanisms interact in a complex manner: they can be used in a complementary way when context helps reduce referential uncertainty; they influence word learning about equally strongly when cross-situational and contextual evidence are in conflict; and contextual cues block aspects of cross-situational learning when both mechanisms are independently applicable. To address this complex pattern of findings, we present a probabilistic computational model of word learning which extends a previous cross-situational model (Fazly et al., 2010) with an attention mechanism based on sentential cues. Our model uses a framework that seamlessly combines the two sources of evidence in order to study their emerging pattern of interaction during the process of word learning. Simulations of the experiments of (Koehne and Crocker, 2010, 2011) reveal an overall pattern of results that are in line with their findings. Importantly, we demonstrate that our model does not need to explicitly assign priority to either source of evidence in order to produce these results: learning patterns emerge as a result of a probabilistic interaction between the two clue types. Moreover, using a computational model allows us to examine the developmental trajectory of the differential roles of cross-situational and sentential cues in word learning.
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spelling pubmed-33877252012-07-10 Sentence-Based Attentional Mechanisms in Word Learning: Evidence from a Computational Model Alishahi, Afra Fazly, Afsaneh Koehne, Judith Crocker, Matthew W. Front Psychol Psychology When looking for the referents of novel nouns, adults and young children are sensitive to cross-situational statistics (Yu and Smith, 2007; Smith and Yu, 2008). In addition, the linguistic context that a word appears in has been shown to act as a powerful attention mechanism for guiding sentence processing and word learning (Landau and Gleitman, 1985; Altmann and Kamide, 1999; Kako and Trueswell, 2000). Koehne and Crocker (2010, 2011) investigate the interaction between cross-situational evidence and guidance from the sentential context in an adult language learning scenario. Their studies reveal that these learning mechanisms interact in a complex manner: they can be used in a complementary way when context helps reduce referential uncertainty; they influence word learning about equally strongly when cross-situational and contextual evidence are in conflict; and contextual cues block aspects of cross-situational learning when both mechanisms are independently applicable. To address this complex pattern of findings, we present a probabilistic computational model of word learning which extends a previous cross-situational model (Fazly et al., 2010) with an attention mechanism based on sentential cues. Our model uses a framework that seamlessly combines the two sources of evidence in order to study their emerging pattern of interaction during the process of word learning. Simulations of the experiments of (Koehne and Crocker, 2010, 2011) reveal an overall pattern of results that are in line with their findings. Importantly, we demonstrate that our model does not need to explicitly assign priority to either source of evidence in order to produce these results: learning patterns emerge as a result of a probabilistic interaction between the two clue types. Moreover, using a computational model allows us to examine the developmental trajectory of the differential roles of cross-situational and sentential cues in word learning. Frontiers Research Foundation 2012-07-02 /pmc/articles/PMC3387725/ /pubmed/22783211 http://dx.doi.org/10.3389/fpsyg.2012.00200 Text en Copyright © 2012 Alishahi, Fazly, Koehne and Crocker. http://www.frontiersin.org/licenseagreement This is an open-access article distributed under the terms of the Creative Commons Attribution Non Commercial License, which permits non-commercial use, distribution, and reproduction in other forums, provided the original authors and source are credited.
spellingShingle Psychology
Alishahi, Afra
Fazly, Afsaneh
Koehne, Judith
Crocker, Matthew W.
Sentence-Based Attentional Mechanisms in Word Learning: Evidence from a Computational Model
title Sentence-Based Attentional Mechanisms in Word Learning: Evidence from a Computational Model
title_full Sentence-Based Attentional Mechanisms in Word Learning: Evidence from a Computational Model
title_fullStr Sentence-Based Attentional Mechanisms in Word Learning: Evidence from a Computational Model
title_full_unstemmed Sentence-Based Attentional Mechanisms in Word Learning: Evidence from a Computational Model
title_short Sentence-Based Attentional Mechanisms in Word Learning: Evidence from a Computational Model
title_sort sentence-based attentional mechanisms in word learning: evidence from a computational model
topic Psychology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3387725/
https://www.ncbi.nlm.nih.gov/pubmed/22783211
http://dx.doi.org/10.3389/fpsyg.2012.00200
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