高等教育商学与经济学领域定量推理的建模与度量

Susanne Schmidt, O. Zlatkin‐Troitschanskaia, R. Shavelson
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引用次数: 1

摘要

定量推理被认为是在高等教育中获得特定领域专业知识的关键先决条件。为了确定学生是否正在发展定量推理,需要有效评估其在学习过程中的发展。然而,在学术研究项目中衡量定量推理时,它往往与其他技能混淆。遵循情境方法,我们专注于商业和经济领域的定量推理,并将特定领域的定量推断主要定义为一种技能和能力,允许在现实世界的商业和经济任务中对数字、算术运算、图形分析和模式进行理性思考,从而解决问题。正如许多研究所表明的那样,评估商业和经济知识的成熟工具,如理解大学经济学测试(TUCE)和执照通用考试(EGEL),包含需要特定领域定量推理技能的项目。在这项研究中,我们采用了一种新的方法,并假设评估商业和经济学知识提供了提取特定领域定量推理的机会,作为在特定领域任务中处理定量数据的技能。我们提出了一种方法,其中定量推理——嵌入TUCE和EGEL任务的现有测量中——将从经验中提取。因此,我们揭示了利用领域特定定量推理的项目在证实性因素分析中构成了一个经验上可分离的因素,并且该因素(领域特定定量推断)可以使用现有的知识评估进行有效和可靠的测量。这种新的方法论方法基于使用现有的特定领域测试获得学生定量推理技能的信息,为评估学生在高等教育中的学习成果提供了一种替代广泛测试的实用方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling and Measuring Domain-Specific Quantitative Reasoning in Higher Education Business and Economics
Quantitative reasoning is considered a crucial prerequisite for acquiring domain-specific expertise in higher education. To ascertain whether students are developing quantitative reasoning, validly assessing its development over the course of their studies is required. However, when measuring quantitative reasoning in an academic study program, it is often confounded with other skills. Following a situated approach, we focus on quantitative reasoning in the domain of business and economics and define domain-specific quantitative reasoning primarily as a skill and capacity that allows for reasoned thinking regarding numbers, arithmetic operations, graph analyses, and patterns in real-world business and economics tasks, leading to problem solving. As many studies demonstrate, well-established instruments for assessing business and economics knowledge like the Test of Understanding College Economics (TUCE) and the Examen General para el Egreso de la Licenciatura (EGEL) contain items that require domain-specific quantitative reasoning skills. In this study, we follow a new approach and assume that assessing business and economics knowledge offers the opportunity to extract domain-specific quantitative reasoning as the skill for handling quantitative data in domain-specific tasks. We present an approach where quantitative reasoning – embedded in existing measurements from TUCE and EGEL tasks – will be empirically extracted. Hereby, we reveal that items tapping domain-specific quantitative reasoning constitute an empirically separable factor within a Confirmatory Factor Analysis and that this factor (domain-specific quantitative reasoning) can be validly and reliably measured using existing knowledge assessments. This novel methodological approach, which is based on obtaining information on students’ quantitative reasoning skills using existing domain-specific tests, offers a practical alternative to broad test batteries for assessing students’ learning outcomes in higher education.
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来源期刊
Frontline Learning Research
Frontline Learning Research Social Sciences-Education
CiteScore
5.50
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0.00%
发文量
6
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