An evaluation of a computational technique for measuring the embeddedness of sustainability in the curriculum aligned to AASHE-STARS and the United Nations Sustainable Development Goals

P. Lemarchand, C. Macmahon, Mick McKeever, P. Owende
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引用次数: 1

Abstract

Introduction SDG 4.7 mandates university contributions to the United Nations (UN) Sustainable Development Goals (SDGs) through their education provisions. Hence, universities increasingly assess their curricular alignment to the SDGs. A common approach to the assessment is to identify keywords associated with specific SDGs and to analyze for their presence in the curriculum. An inherent challenge is associating the identified keywords as used in the diverse set of curricular contexts to relevant sustainability indicators; hence, the urgent need for more systematic assessment as SDG implementation passes its mid-cycle. Method In this study, a more nuanced technique was evaluated with notable capabilities for: (i) computing the importance of keywords based on the term frequency-inverse document frequency (TF-IDF) method; (ii) extending this computation to the importance of courses to each SDG and; (iii) correlating such importance to a statistical categorization based on the Association for the Advancement of Sustainability in Higher Education (AASHE) criteria. Application of the technique to analyze 5,773 modules in a university's curriculum portfolio facilitated categorization of the modules/courses to be “sustainability-focused” or “sustainability-inclusive.” With the strategic objective of systematically assessing the sustainability content of taught curricula, it is critical to evaluate the precision and accuracy of the computed results, in order to attribute text with the appropriate SDGs and level of sustainability embeddedness. This paper evaluates this technique, comparing its results against a manual and labor-intensive interpretation of expert informed assessment of sustainability embeddedness on a random sample of 306 modules/courses. Results and discussion Except for SDGs 1 and 17, the technique exhibited a reasonable degree of accuracy in predicting module/course alignment to SDGs and in categorizing them using AASHE criteria. Whilst limited to curricular contexts from a single university, this study indicates that the technique can support curricular transformation by stimulating enhancement and reframing of module/course contexts through the lens of the SDGs.
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对一种计算技术的评估,该技术用于测量与AASHE-STARS和联合国可持续发展目标相一致的课程中可持续性的嵌入性
可持续发展目标4.7要求大学通过其教育规定为联合国可持续发展目标(SDG)做出贡献。因此,大学越来越多地评估其课程与可持续发展目标的一致性。一种常见的评估方法是确定与特定可持续发展目标相关的关键词,并分析它们在课程中的存在。一个固有的挑战是将各种课程背景中使用的已确定的关键字与有关的可持续性指标联系起来;因此,随着可持续发展目标的实施进入中期,迫切需要进行更系统的评估。在本研究中,对一种更细致的技术进行了评估,该技术具有显著的能力:(i)基于术语频率-逆文档频率(TF-IDF)方法计算关键字的重要性;(ii)将此计算扩展到课程对每个可持续发展目标的重要性;(iii)将这种重要性与基于促进高等教育可持续性协会(AASHE)标准的统计分类联系起来。应用该技术分析一所大学课程组合中的5773个模块,有助于将模块/课程分类为“以可持续发展为重点”或“包括可持续发展”。为了系统地评估教学课程的可持续性内容,评估计算结果的精度和准确性至关重要,以便为文本赋予适当的可持续发展目标和可持续性嵌入水平。本文对该技术进行了评估,并将其结果与对306个模块/课程随机抽样的可持续性嵌入性专家知情评估的人工和劳动密集型解释进行了比较。除SDGs 1和17外,该技术在预测模块/课程与SDGs的一致性以及使用AASHE标准对它们进行分类方面表现出合理的准确性。虽然仅限于一所大学的课程背景,但这项研究表明,通过可持续发展目标的视角,该技术可以通过刺激增强和重构模块/课程背景来支持课程转型。
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