心理学
背景(考古学)
学生参与度
数学教育
语境效应
多元方法论
社会心理学
教育学
发展心理学
认知心理学
语言学
生物
词(群论)
哲学
古生物学
作者
Christine L. Bae,Mark H. C. Lai
摘要
As student engagement in science learning continues to garner significant attention from educational researchers, practitioners, and policymakers, the importance of understanding person and context-related factors that impact student engagement is increasingly recognized. In this mixed methods study, middle school students’ (N = 1,848) engagement was examined in relation to opportunities to participate in science learning (OtP in science) from 29 schools in the United States. Drawing on the ecological systems and opportunity-propensity frameworks, multilevel structural equation modeling was applied to test the relationship between OtP in science and student engagement, accounting for student (gender, grade, ethnicity) and school (socioeconomic status) factors. Results showed that at the student level, OtP in science was a statistically significant predictor of engagement, and this relationship varied by school. In addition, school SES predicted school-average OtP in science, and there was a statistically significant cross-level interaction for school SES, in that the relationship between OtP in science and engagement was stronger for schools with higher SES. In the qualitative phase, 6 student focus group interviews were analyzed to develop explanatory accounts for the quantitative results. Collaborative hands-on activities, peer-to-peer discourse, and positive teacher and student relationships were identified as social processes that facilitated students’ propensity to engage in the science learning opportunities. Factors related to school SES that explain the link between OtP in science and student engagement are also described. Taken together, our findings provide a more complete picture of how students’ engagement in science relates to person and context-related factors and hold theoretical and practical implications for the study of engagement in diverse classrooms. (PsycInfo Database Record (c) 2020 APA, all rights reserved)
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