主动学习静力学课程中学生学习自我报告测量的有效性

IF 1.1 Q3 EDUCATION, SCIENTIFIC DISCIPLINES International Journal of Mechanical Engineering Education Pub Date : 2024-05-23 DOI:10.1177/03064190241253509
Kimberly LeChasseur, Sarah Wodin-Schwartz, A. Sloboda, Adam Powell
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引用次数: 0

摘要

尽管以教师为中心的教学法在科学、技术、工程和数学本科教育中普遍存在,但人们对主动学习方法的兴趣却与日俱增。随着机械工程学科教育研究不断评估改善学生学习和发展的策略,研究人员需要数据收集工具来改善偏差问题,最大限度地降低成本(如时间和学生注意力),并提供在学科背景下经过验证的可靠数据。本研究分析了学生学习收获评估(SALG)这一常用调查的有效性和可靠性。来自两所大学的七门《统计学导论》课程的数据被用来识别和确认测量的潜在构造,并评估其信度和标准效度。结果表明,四个量表--主动学习、概念知识和技能、自我效能感和反馈机制--解释了 SALG 调查中与静力学教与学相关的大部分变化。这些量表经过统计验证,证明能够准确捕捉它们所代表的标准。SALG 的主要优点是减轻了学生的负担,学生只需在课程结束时花 10 到 15 分钟完成一次调查,而不需要花更多时间完成较长的调查或需要在多个时间点完成的调查。因此,该工具对课堂的干扰也较小,这可能会使教师更愿意在其课程中加入数据收集工作。
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Validity of a self-report measure of student learning in active learning statics courses
Although faculty-centered pedagogies are endemic across undergraduate science, technology, engineering, and mathematics education, there is increasing interest in active learning approaches. As discipline-based educational research in mechanical engineering continues to assess strategies for improving student learning and development, researchers need data collection tools that ameliorate issues of bias, minimize costs (e.g. time and student attention), and provide reliable data that has been validated within the disciplinary context. This study analyzes the validity and reliability of a commonly used survey, the Students’ Assessment of their Learning Gains (SALG). Data from seven Introduction to Statics courses at two universities were used to identify and confirm the latent constructs of the measure and to assess their reliability and criterion validity. Results demonstrated that four scales—active learning, concept knowledge and skills, self-efficacy, and feedback mechanisms—explain the majority of variation in the SALG survey in relation to the teaching and learning of statics. These scales were statistically validated and shown to accurately capture the criterion they represent. The primary advantage of the SALG is that it is less burdensome to students, who are only required to spend 10 to 15 min once at the end of the course to complete the survey, rather than spending more time with longer surveys or with those that require completion at multiple points in time. The tool is therefore also less disruptive to the class, which may make it more likely that faculty will be willing to include data collection efforts in their courses.
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来源期刊
CiteScore
3.00
自引率
28.60%
发文量
13
期刊介绍: The International Journal of Mechanical Engineering Education is aimed at teachers and trainers of mechanical engineering students in higher education and focuses on the discussion of the principles and practices of training professional, technical and mechanical engineers and those in related fields. It encourages articles about new experimental methods, and laboratory techniques, and includes book reviews and highlights of recent articles in this field.
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