1. Data-driven learning with younger learners: exploring corpus-assisted development of the passive voice for science writing with female secondary school students.
- Author
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Crosthwaite, Peter and Steeples, Brett
- Subjects
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LEARNING , *SECONDARY education , *PASSIVE voice in the English language , *ENGLISH language education - Abstract
Corpus-based approaches to language and literacy education, commonly known as data-driven learning (DDL), are increasing in prominence. However, the vast majority of DDL interventions involve adult tertiary level learners, leaving a dire need for comprehensive DDL studies for secondary education. The present study reports on a half-year DDL experiment conducted at an all-girls secondary school in Australia, focusing on the development of receptive and productive knowledge of passive voice constructions used when writing scientific research reports for a physical science class. Pre/post-tests were conducted testing learners' receptive knowledge and productive use of the passive, alongside data on learners' autonomous use of corpora within a written research report. Learners' perceptions of corpora and DDL were also collected through questionnaire survey and interview data taken both immediately post-training and three months after training. The results suggest learners' corpus consultation was effective in improving use of the passive voice for science writing with pre-tertiary learners, although clear preferences for (and criticisms of) certain corpus tools, functions and usage was apparent, and continued uptake post-training was relatively weak. Generally however, the implications of these findings paint a positive picture of what is possible regarding DDL with younger learners, and provide a model of how a DDL intervention with younger learners can be successfully managed and integrated in a context where secondary content teachers, rather than solely the applied linguist, can be the main stakeholders in a DDL intervention. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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