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Which phonological and lexical factors best influence whether a word is produced and pronounced well?

Published online by Cambridge University Press:  10 February 2023

Margaret KEHOE*
Affiliation:
Université de Genève, Switzerland
Aya ABU LABAN
Affiliation:
Université de Genève, Switzerland
Romane LESPINASSE
Affiliation:
Université de Genève, Switzerland
*
*Corresponding author. Margaret Kehoe, Faculté de psychologie et des sciences de l’éducation, Université de Genève, 28, bd du Pont-d’Arve, 1205 Genève, Switzerland. Email: Margaret.Winkler-Kehoe@unige.ch
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Abstract

This study examines lexical and phonological factors that influence word production and pronunciation. Specifically, we investigate whether phonological production (measured by percent consonants correct) contributes to word production and pronunciation over and above the properties of the target words (e.g., word frequency, neighborhood density, and phonetic complexity). Forty French-speaking monolingual and bilingual children, aged 1;11 to 3;1, participated in a spontaneous language sample and were administered a naming and a nonword repetition task. Their parents filled out the MacArthur Communicative Developmental Inventory (MCDI) and rated their children’s pronunciation on an experimental version of the MCDI. Statistical models indicated that word frequency and the phonetic complexity of the target words influenced whether a word was produced. These factors along with neighborhood density and the children’s production capacities influenced whether a word was pronounced poorly or well. Findings indicate that parents can provide reliable information on the word pronunciation of their children.

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Type
Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2023. Published by Cambridge University Press
Figure 0

Table 1. Descriptive statistics for the lexical and phonological measures

Figure 1

Table 2. Descriptive statistics (means and standard deviations) for the lexical and phonological measures separated according to monolingual and bilingual children

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Table 3. Correlation matrix between lexical and phonological variables

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Table 4. Correlation coefficients between psycholinguistic variables

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Table 5. Model 1: Production. Best fitting model to explain the factors that influence whether a word is produced or not on the French MCDI

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Figure 1. This graph shows the relation between phonetic complexity (IPC) and word frequency (WF). It plots the mean WF for produced and non-produced words across the mean IPC for the 40 children.

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Figure 2. This graph shows the relation between word frequency (WF) and vocabulary size. It plots the mean WF for produced and non-produced words across vocabulary size for the 40 children based on the French MCDI.

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Table 6. Model 2: Production and Pronunciation. Best fitting model to explain the factors that influence whether a word is pronounced poorly, adequately, well, or not at all produced on the French MCDI

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Figure 3. This graph shows the mean log word frequency (and standard deviation) for words that were not produced, pronounced adequately and well for the 40 children. Results for poorly pronounced words are not shown because they were not frequently reported by parents.

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Figure 4. This graph shows the relation between log word frequency (WF) and percent consonants correct on the single-word naming task (PCC-Name). The mean log WF for non-produced words as well as for words that were pronounced adequately and well are plotted across the mean PCC-Name for the 40 children.

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Figure 5. This graph shows the relation between neighbourhood density (ND) and percent consonants correct on the single-word naming task (PCC-Name). The mean ND for non-produced words as well as for words that were pronounced adequately and well are plotted across mean PCC-Name for the 40 children.

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Table 7. Model 3: Pronunciation. Best fitting model to explain the factors that influence whether a word is pronounced poorly, adequately, or well on the MCDI-pronunciation

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Figure 6. Means and standard deviation of word frequency (6a), phonetic complexity (6b), and neighbourhood density (6c) for adequately and well-pronounced words across the 40 children.

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Figure 7. This graph shows the relation between phonetic complexity (ICP) and percent consonants correct on the single-word naming task (PCC-name). The mean IPCs for words that were pronounced adequately and well are plotted across mean PCC-Name for the 40 children.

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Table 8. Summary of the three different statistical models

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Table 9. Examples of three children’s phonological errors from the different sampling methods

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a