用汉字听写的机器学习识别中国儿童阅读障碍

IF 2.9 2区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH
Stephen Man Kit Lee, Hey Wing Liu, Shelley Xiuli Tong
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引用次数: 2

摘要

摘要目的阅读障碍的病因多样,表现各异。有阅读障碍的中国儿童在写作时表现出正字法、语音和语义上的缺陷。然而,字符听写是否可以用来区分患有阅读障碍的儿童和他们正常发展的同龄人仍未被探索。方法利用1015名中国2-6年级读写困难儿童的文字数据集,采用不同的学习算法对多个机器模型进行训练。结果多层多维模型的预测准确率为78.0%,其中笔画、年级、词性和字型是预测准确率最高的特征。当只包含这些特征时,模型的准确率提高到80.0%。结论这些结果不仅为汉语阅读障碍的多维原因提供了证据,而且突出了机器学习在通过汉语听写区分阅读障碍儿童和同龄人中的应用,为未来的研究指明了一个有前景的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Chinese Children with Dyslexia Using Machine Learning with Character Dictation
ABSTRACT Purpose Dyslexia is characterized by its diverse causes and heterogeneous manifestations. Chinese children with dyslexia exhibit orthographic, phonological, and semantic deficits across character and radical levels when writing. However, whether character dictation can be used to distinguish children with dyslexia from their typically developing peers remains unexplored. Method A dataset of written characters from 1,015 Chinese children with and without dyslexia from Grades 2–6 was used to train multiple machine models with different learning algorithms. Results The multi-level multidimensional model reached a predictive accuracy of 78.0%, with stroke, grade, lexicality, and character configuration manifesting as the most predictive features. The accuracy of the model improved to 80.0% when only these features were included. Conclusion These results not only provide evidence for the multidimensional causes of Chinese dyslexia, but also highlight the utility of machine learning in distinguishing children with dyslexia from their peers via Chinese dictation, which elucidates a promising area of future research.
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来源期刊
CiteScore
7.20
自引率
2.70%
发文量
26
期刊介绍: This journal publishes original empirical investigations dealing with all aspects of reading and its related areas, and, occasionally, scholarly reviews of the literature, papers focused on theory development, and discussions of social policy issues. Papers range from very basic studies to those whose main thrust is toward educational practice. The journal also includes work on "all aspects of reading and its related areas," a phrase that is sufficiently general to encompass issues related to word recognition, comprehension, writing, intervention, and assessment involving very young children and/or adults.
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