How granularity of orthography-phonology mappings affect reading development : evidence from a computational model of English word reading and spelling

It is widely held that children implicitly learn the structure of their writing system through statistical learning of spelling-tosound mappings. Yet an unresolved question is how to sequence reading experience so that children can ‘pick up’ the structure optimally. We tackle this question here usin...

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Main Authors: Lim, Alfred, O’Brien, Beth A., Onnis, Luca
其他作者: School of Electrical and Electronic Engineering
格式: Conference or Workshop Item
語言:English
出版: 2021
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在線閱讀:https://www.semanticscholar.org/paper/How-Granularity-of-Orthography-Phonology-Mappings-a-Lim-O'Brien/6e1f581e69718738ffa8c4a5ad7468280df4d9a3#extracted
https://hdl.handle.net/10356/146263
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spelling sg-ntu-dr.10356-1462632021-02-04T07:08:31Z How granularity of orthography-phonology mappings affect reading development : evidence from a computational model of English word reading and spelling Lim, Alfred O’Brien, Beth A. Onnis, Luca School of Electrical and Electronic Engineering 7th Italian Conference on Computational Linguistics Engineering::Computer science and engineering Reading Development English It is widely held that children implicitly learn the structure of their writing system through statistical learning of spelling-tosound mappings. Yet an unresolved question is how to sequence reading experience so that children can ‘pick up’ the structure optimally. We tackle this question here using a computational model of encoding and decoding. The order of presentation of words was manipulated so that they exhibited two distinct progressions of granularity of spelling-to-sound mappings. We found that under a training regime that introduced written words progressively from small-to-large granularity, the network exhibited an early advantage in reading acquisition as compared to a regime introducing written words from large-to-small granularity. Our results thus provide support for the grain size theory (Ziegler and Goswami, 2005) and demonstrate that the order of learning can influence learning trajectories of literacy skills. Nanyang Technological University Published version Support comes from the Education Research Funding Programme of the National Institute of Education (NIE), Nanyang Technological University, Singapore, grant #OER0417OBA. 2021-02-04T07:08:31Z 2021-02-04T07:08:31Z 2020 Conference Paper Lim, A., O'Brien, B. A., & Onnis, L. (2020). How granularity of orthography-phonology mappings affect reading development : evidence from a computational model of English word reading and spelling. Proceedings of 7th Italian Conference on Computational Linguistics. https://www.semanticscholar.org/paper/How-Granularity-of-Orthography-Phonology-Mappings-a-Lim-O'Brien/6e1f581e69718738ffa8c4a5ad7468280df4d9a3#extracted https://hdl.handle.net/10356/146263 en #OER0417OBA © 2020 The Authors. Use permitted under Creative Commons License Attribution 4.0 International (CC BY 4.0). application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Computer science and engineering
Reading Development
English
spellingShingle Engineering::Computer science and engineering
Reading Development
English
Lim, Alfred
O’Brien, Beth A.
Onnis, Luca
How granularity of orthography-phonology mappings affect reading development : evidence from a computational model of English word reading and spelling
description It is widely held that children implicitly learn the structure of their writing system through statistical learning of spelling-tosound mappings. Yet an unresolved question is how to sequence reading experience so that children can ‘pick up’ the structure optimally. We tackle this question here using a computational model of encoding and decoding. The order of presentation of words was manipulated so that they exhibited two distinct progressions of granularity of spelling-to-sound mappings. We found that under a training regime that introduced written words progressively from small-to-large granularity, the network exhibited an early advantage in reading acquisition as compared to a regime introducing written words from large-to-small granularity. Our results thus provide support for the grain size theory (Ziegler and Goswami, 2005) and demonstrate that the order of learning can influence learning trajectories of literacy skills.
author2 School of Electrical and Electronic Engineering
author_facet School of Electrical and Electronic Engineering
Lim, Alfred
O’Brien, Beth A.
Onnis, Luca
format Conference or Workshop Item
author Lim, Alfred
O’Brien, Beth A.
Onnis, Luca
author_sort Lim, Alfred
title How granularity of orthography-phonology mappings affect reading development : evidence from a computational model of English word reading and spelling
title_short How granularity of orthography-phonology mappings affect reading development : evidence from a computational model of English word reading and spelling
title_full How granularity of orthography-phonology mappings affect reading development : evidence from a computational model of English word reading and spelling
title_fullStr How granularity of orthography-phonology mappings affect reading development : evidence from a computational model of English word reading and spelling
title_full_unstemmed How granularity of orthography-phonology mappings affect reading development : evidence from a computational model of English word reading and spelling
title_sort how granularity of orthography-phonology mappings affect reading development : evidence from a computational model of english word reading and spelling
publishDate 2021
url https://www.semanticscholar.org/paper/How-Granularity-of-Orthography-Phonology-Mappings-a-Lim-O'Brien/6e1f581e69718738ffa8c4a5ad7468280df4d9a3#extracted
https://hdl.handle.net/10356/146263
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