非认知因素与学生长期成功:观察性学业行为与社交情绪技能预测效度之比较

IF 1.6 3区 教育学 Q2 EDUCATION & EDUCATIONAL RESEARCH Educational Policy Pub Date : 2023-11-10 DOI:10.1177/08959048231209262
Jing Liu, Megan Kuhfeld, Monica Lee
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引用次数: 0

摘要

自我效能感、社会意识和学术参与等非认知结构被广泛认为是人力资本的关键组成部分,但在学校系统中,关于这些技能的系统数据收集因概念模糊、测量挑战和资源限制而变得复杂。本研究通过比较两种最广泛使用的非认知结果指标的预测有效性来解决这一问题——可观察到的学术行为(例如,旷课、停学)和学生自我报告的社会和情感学习(SEL)技能——对高中毕业和中学后成就的可能性的预测有效性。我们的研究结果表明,在学生人口统计和成绩的条件下,学习行为比SEL技能对所有长期结果的预测能力高出几倍,并且将SEL技能添加到具有学习行为的模型中,对模型的预测能力的提高微乎其微。此外,学习行为对学习成绩差的学生的长期成绩有很强的预测作用。旷课(逃课的结果)是学业行为强大预测能力背后的最大驱动力。在现有的行政数据系统中开发更细致的行为测量方法,对于以预测学生的教育成就为目标的学校来说,可能是一种卓有成效的策略。
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Noncognitive Factors and Student Long-Run Success: Comparing the Predictive Validity of Observable Academic Behaviors and Social-Emotional Skills
Noncognitive constructs such as self-efficacy, social awareness, and academic engagement are widely acknowledged as critical components of human capital, but systematic data collection on such skills in school systems is complicated by conceptual ambiguities, measurement challenges and resource constraints. This study addresses this issue by comparing the predictive validity of two most widely used metrics on noncogntive outcomes—observable academic behaviors (e.g., absenteeism, suspensions) and student self-reported social and emotional learning (SEL) skills—for the likelihood of high school graduation and postsecondary attainment. Our findings suggest that conditional on student demographics and achievement, academic behaviors are several-fold more predictive than SEL skills for all long-run outcomes, and adding SEL skills to a model with academic behaviors improves the model’s predictive power minimally. In addition, academic behaviors are particularly strong predictors for low-achieving students’ long-run outcomes. Part-day absenteeism (as a result of class skipping) is the largest driver behind the strong predictive power of academic behaviors. Developing more nuanced behavioral measures in existing administrative data systems might be a fruitful strategy for schools whose intended goal centers on predicting students’ educational attainment.
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来源期刊
Educational Policy
Educational Policy EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
4.50
自引率
11.10%
发文量
42
期刊介绍: Educational Policy provides an interdisciplinary forum for improving education in primary and secondary schools, as well as in high education and non school settings. Educational Policy blends the best of educational research with the world of practice, making it valuable resource for educators, policy makers, administrators, researchers, teachers, and graduate students. Educational Policy is concerned with the practical consequences of policy decisions and alternatives. It examines the relationship between educational policy and educational practice, and sheds new light on important debates and controversies within the field. You"ll find that Educational Policy is an insightful compilation of ideas, strategies, and analyses for improving our educational systems.
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