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Educational Psychology
An International Journal of Experimental Educational Psychology
Volume 38, 2018 - Issue 3
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Articles

Attributional patterns towards students with and without learning disabilities: a comparison of pre- and in-service teachers in China

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Pages 286-304 | Received 27 Oct 2014, Accepted 18 Jun 2017, Published online: 04 Jul 2017
 

Abstract

This study aims to investigate the differences of attributional responses to students with and without learning disabilities (LD) between pre- and in-service teachers in mainland China. A total of 204 teachers (101 pre-service and 103 in-service teachers) were surveyed using vignettes and Likert scale questions to ascertain their responses to students with and without LD. Drawing from Weiner’s attributional theory, teachers’ feedback, frustration, sympathy and expectation were measured. A multivariate analysis of variance (MANOVA) was executed to compare pre-service and in-service teacher responses regarding students with and without LD. The findings showed that pre-service teachers experienced significantly lower frustration than in-service teachers to students with and without LD. Moreover, the teachers gave more positive feedback but felt less sympathy to students with LD who exerted high effort. These findings implied that pre-service tended to foster a more positive attribution style. Implications and recommendations for research and practice are also presented.

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