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模拟新冠疫情学习冲击的长期学习影响:(不止于)减轻损失的行动。

Modelling the long-run learning impact of the Covid-19 learning shock: Actions to (more than) mitigate loss.

作者信息

Kaffenberger Michelle

机构信息

University of Oxford, Oxford, United Kingdom.

出版信息

Int J Educ Dev. 2021 Mar;81:102326. doi: 10.1016/j.ijedudev.2020.102326.

Abstract

This paper uses a calibrated "pedagogical production function" model to estimate the potential long-term losses to children's learning from the temporary shock of Covid-19 related school closures. It then models possible gains from two mitigation strategies. Without mitigation, children could lose more than a full year's worth of learning from a three-month school closure because they will be behind the curriculum when they re-enter school and will fall further behind as time goes on. Remediation when children return to school reduces the long-term learning loss by half, but still leaves children more than half a year behind where they would have been with no shock. Remediation combined with long-term reorientation of curriculum to align with children's learning levels fully mitigates the long-term learning loss due to the shock and surpasses the learning in the counterfactual of no shock by more than a full year's worth of learning. Systems need to begin planning now for remediation programmes, and as they do so they should build programmes and train teachers in ways that can continue to produce benefits beyond the period immediately following reopening.

摘要

本文使用一个经过校准的“教学生产函数”模型,来估计因新冠疫情相关学校停课这一临时冲击而给儿童学习造成的潜在长期损失。然后,它对两种缓解策略可能带来的收益进行建模。如果不采取缓解措施,儿童因三个月的学校停课可能会损失超过一整年的学习量,因为他们在重新入学时会落后于课程进度,并且随着时间推移会进一步落后。儿童返校后进行补习可将长期学习损失减半,但仍使儿童比未受冲击时落后半年多。补习与课程的长期重新调整相结合,以使其与儿童的学习水平相匹配,可完全缓解因冲击造成的长期学习损失,并且比无冲击情况下的学习量超出一整年多。各系统现在就需要开始为补习计划做准备,而且在这样做的过程中,它们应以能够在重新开学后的这段时间之外继续产生效益的方式来制定计划并培训教师。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e80f/9758502/7a406bb70466/gr1_lrg.jpg

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