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Educational Psychology
An International Journal of Experimental Educational Psychology
Volume 37, 2017 - Issue 10
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Articles

Cross-lagged cross-subject bidirectional predictions among achievements in mathematics, English language and Chinese language of school children

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Pages 1259-1280 | Received 30 Sep 2016, Accepted 22 May 2017, Published online: 02 Jun 2017
 

Abstract

This study aimed to explore the cross-lagged association of achievements in mathematics and languages. While the effect of language on achievements in mathematics is well-documented, few studies have examined the reciprocal relationships among mathematics, the Chinese language and the English language in the same study. This study conducted a secondary analysis of longitudinal achievement data collected through the Territory-wide System Assessment (TSA) in Hong Kong. The sample comprised 48,547 third-grade, unbalanced bilingual students who were measured three times over six years: in 2007 (in Grade 3), 2010 (Grade 6) and 2013 (Grade 9). Multilevel cross-lagged analysis found prior achievement in a subject was the strongest predictor of achievement in that subject three years later. Furthermore, cross-subject bidirectional prediction was found among achievements in mathematics, Chinese language and English language for students from Grade 3 to Grade 6 and from Grade 6 to Grade 9.

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