Investigating teaching practices in quantitative and computational Social Sciences: A case study

IASSIST quarterly Pub Date : 2022-12-01 DOI:10.29173/iq1039
Rebecca Greer, R. Curty
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Abstract

Data education is gaining traction across disciplines and degree levels in higher education. Teaching data skills in the Social Sciences in today's data-driven world is vital for preparing the next generation of data literate and critical social scientists. The ability to identify, assess, analyze, and communicate well and responsibly with data is key for scholars and professionals to navigate dynamic and expansive information ecosystems. This paradigm shift demands instructors to adapt their curricula and pedagogy to advance students’ computational and statistical knowledge. This paper presents some of the findings from a local report of a larger national project which explored pedagogical techniques and instructional support needs for teaching undergraduates with quantitative data in the Social Sciences. Results revealed that the core learning goal of instructors is to develop students' critical thinking skills with data, including the conceptual understanding of the research methods employed in the field; the ability to critically evaluate research methodologies, findings, and data sets; and prowess using quantitative and computational tools and technologies. A recurring theme across interviews was students’ fear of math and technology and challenges these fears pose to data-related instruction. Instructors value participation in a community of practice and are eager for more institutional support to advance their computational skills. Based on these findings, we suggest avenues for academic libraries to further develop services, activities, and partnerships to aid data instruction efforts in the Social Sciences.
研究定量与计算社会科学的教学实践:个案研究
数据教育在高等教育的各个学科和学位层次上越来越受欢迎。在当今数据驱动的世界里,在社会科学中教授数据技能对于培养下一代懂数据和批判性社会科学家至关重要。识别、评估、分析和负责任地与数据沟通的能力是学者和专业人士驾驭动态和广泛的信息生态系统的关键。这种范式的转变要求教师调整课程和教学法,以提高学生的计算和统计知识。本文介绍了一个大型国家项目的地方报告中的一些发现,该项目探讨了在社会科学领域用定量数据教授本科生的教学技术和教学支持需求。结果表明,教师的核心学习目标是利用数据培养学生的批判性思维技能,包括对该领域所用研究方法的概念理解;批判性评估研究方法、发现和数据集的能力;以及使用定量和计算工具和技术的能力。采访中反复出现的一个主题是学生对数学和技术的恐惧,以及这些恐惧对数据相关教学构成的挑战。讲师重视参与实践社区,并渴望获得更多的机构支持,以提高他们的计算技能。基于这些发现,我们提出了学术图书馆进一步发展服务、活动和合作伙伴关系的途径,以帮助社会科学领域的数据教学工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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