Statistical methods to estimate the impact of remote teaching on university students' performance.

Q1 Mathematics
Silvia Bacci, Bruno Bertaccini, Simone Del Sarto, Leonardo Grilli, Carla Rampichini
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引用次数: 0

Abstract

The COVID-19 pandemic manifested around the World since February 2020, leading to disruptive effects on many aspects of people social life. The suspension of face-to-face teaching activities in schools and universities was the first containment measure adopted by the Governments to deal with the spread of the virus. Remote teaching has been the emergency solution implemented by schools and universities to limit the damages of schools and universities closure to students' learning. In this contribution we intend to suggest to policy makers and researchers how to assess the impact of emergency policies on remote learning in academia by analysing students' careers. In particular, we exploit the quasi-experimental setting arising from the sudden implementation of remote teaching in the second semester of academic year 2019/2020: we compare the performance of the cohort 2019/2020, which represents the treatment group, with the performance of the cohort 2018/2019, which represents the control group. We distinguish the impact of remote teaching at two levels: degree program and single courses within a degree program. We suggest to use Difference-In-Differences approach in the former case and multilevel modeling in the latter one. The proposal is illustrated analysing administrative data referred to freshmen of cohorts 2018/2019 and 2019/2020 for a sample of degree programs of the University of Florence (Italy).

估算远程教学对大学生成绩影响的统计方法。
COVID-19 大流行病自 2020 年 2 月起在世界各地出现,对人们社会生活的许多方面造成了破坏性影响。暂停大中小学的面对面教学活动是各国政府为应对病毒传播而采取的第一项遏制措施。远程教学是大中小学实施的紧急解决方案,目的是限制大中小学停课对学生学习造成的损害。在这篇论文中,我们打算向政策制定者和研究人员建议,如何通过分析学生的职业生涯来评估紧急政策对学术界远程学习的影响。特别是,我们利用了在 2019/2020 学年第二学期突然实施远程教学所产生的准实验环境:我们比较了代表处理组的 2019/2020 届学生和代表对照组的 2018/2019 届学生的表现。我们从两个层面区分了远程教学的影响:学位课程和学位课程中的单门课程。我们建议在前一种情况下使用差分法,在后一种情况下使用多层次模型。我们分析了佛罗伦萨大学(意大利)学位项目样本中 2018/2019 届和 2019/2020 届新生的行政数据,对该建议进行了说明。
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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来源期刊
Quality & Quantity
Quality & Quantity 管理科学-统计学与概率论
CiteScore
4.60
自引率
0.00%
发文量
276
审稿时长
4-8 weeks
期刊介绍: Quality and Quantity constitutes a point of reference for European and non-European scholars to discuss instruments of methodology for more rigorous scientific results in the social sciences. In the era of biggish data, the journal also provides a publication venue for data scientists who are interested in proposing a new indicator to measure the latent aspects of social, cultural, and political events. Rather than leaning towards one specific methodological school, the journal publishes papers on a mixed method of quantitative and qualitative data. Furthermore, the journal’s key aim is to tackle some methodological pluralism across research cultures. In this context, the journal is open to papers addressing some general logic of empirical research and analysis of the validity and verification of social laws. Thus The journal accepts papers on science metrics and publication ethics and, their related issues affecting methodological practices among researchers. Quality and Quantity is an interdisciplinary journal which systematically correlates disciplines such as data and information sciences with the other humanities and social sciences. The journal extends discussion of interesting contributions in methodology to scholars worldwide, to promote the scientific development of social research.
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