Reading Difficulties Identification : A Comparison of Neural Networks, Linear, and Mixture Models

Abstract
Purpose We aim to identify the most accurate model for predicting adolescent (Grade 9) reading difficulties (RD) in reading fluency and reading comprehension using 17 kindergarten-age variables. Three models (neural networks, linear, and mixture) were compared based on their accuracy in predicting RD. We also examined whether the same or a different set of kindergarten-age factors emerge as the strongest predictors of reading fluency and comprehension difficulties across the models. Method RD were identified in a Finnish sample (N ≈ 2,000) based on Grade 9 difficulties in reading fluency and reading comprehension. The predictors assessed in kindergarten included gender, parental factors (e.g., parental RD, education level), cognitive skills (e.g., phonological awareness, RAN), home literacy environment, and task-avoidant behavior. Results The results suggested that the neural networks model is the most accurate method, as compared to the linear and mixture models or their combination, for the early prediction of adolescent reading fluency and reading comprehension difficulties. The three models elicited rather similar results regarding the predictors, highlighting the importance of RAN, letter knowledge, vocabulary, reading words, number counting, gender, and maternal education. Conclusion The results suggest that neural networks have strong promise in the field of reading research for the early identification of RD.
Main Authors
Format
Articles Research article
Published
2023
Series
Subjects
Publication in research information system
Publisher
Taylor & Francis
The permanent address of the publication
https://urn.fi/URN:NBN:fi:jyu-202208154097Use this for linking
Review status
Peer reviewed
ISSN
1088-8438
DOI
https://doi.org/10.1080/10888438.2022.2095281
Language
English
Published in
Scientific Studies of Reading
Citation
  • Psyridou, M., Tolvanen, A., Patel, P., Khanolainen, D., Lerkkanen, M.-K., Poikkeus, A.-M., & Torppa, M. (2023). Reading Difficulties Identification : A Comparison of Neural Networks, Linear, and Mixture Models. Scientific Studies of Reading, 27(1), 39-66. https://doi.org/10.1080/10888438.2022.2095281
License
CC BY 4.0Open Access
Funder(s)
Research Council of Finland
Research Council of Finland
Research Council of Finland
Research Council of Finland
Research Council of Finland
Research Council of Finland
Funding program(s)
Postdoctoral Researcher, AoF
Research costs of Academy Research Fellow, AoF
Research profiles, AoF
Academy Research Fellow, AoF
Academy Project, AoF
Research costs of Academy Research Fellow, AoF
Tutkijatohtori, SA
Akatemiatutkijan tutkimuskulut, SA
Profilointi, SA
Akatemiatutkija, SA
Akatemiahanke, SA
Akatemiatutkijan tutkimuskulut, SA
Research Council of Finland
Additional information about funding
This work was supported by the Academy of Finland [Grant numbers #263891, #268586, #276239, #284439, #292466, #313768, #339418].
Copyright© 2022 The Author(s). Published with license by Taylor & Francis Group, LLC.

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