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Individualized learning potential in stressful times: How to leverage intensive longitudinal data to inform online learning

机译:在压力时代的个性化学习潜力:如何利用密集的纵向数据来通知在线学习

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Societal events - such as natural disasters, political shifts, or economic downturns - are time-varying and impact the learning potential of students in unique ways. These impacts are likely accentuated during the COVID-19 pandemic, which precipitated an abrupt and wholesale transition to online education. Unfortunately, the individual-level consequences of these events are difficult to determine because the extant literature focuses on single-occasion surveys that produce only group-level inferences. To better understand individual-level variability in stress and learning, intensive longitudinal data can be leveraged. The goal of the paper is to illustrate this by discussing three different techniques for the analysis of intensive longitudinal data: (1) regression analyses; (2) multilevel models; and (3) person-specific network models, (e.g., group iterative multiple model estimation; GIMME). For each technique, a brief background in the context of education research is provided, an illustrative analysis is presented using data from college students who completed a 75-day intensive longitudinal study of cognition, somatic symptoms, anxiety, and intellectual interests during the 2016 U.S. Presidential election - a period of heightened sociopolitical stress - and strengths and limitations are considered. The paper ends with recommendations for future research, especially for intensive longitudinal studies of online education during COVID-19.
机译:社会事件 - 例如自然灾害,政治转变或经济衰退 - 是时代,以独特的方式对学生的学习潜力影响。在Covid-19大流行期间,这些影响可能会强调,这促进了对在线教育的突然和批发过渡。不幸的是,这些事件的个性级别后果难以确定,因为现存文献侧重于单次调查,这些调查仅产生群体级推论。为了更好地了解压力和学习中的个人级别可变性,可以利用密集的纵向数据。本文的目标是通过讨论三种不同的技术来分析密集型纵向数据的分析:(1)回归分析; (2)多级模型; (3)特定于人格的网络模型,(例如,组迭代多模型估计; GIMME)。对于每种技术,提供了在教育研究的背景下的简要背景,使用大学生的数据,在2016年期间,使用大学生的数据来自大学生的数据进行了一项说明性分析,他们总统大选 - 审议了社会政治压力的一段时间,并考虑了优势和局限性。本文以前后研究的建议为止,特别是在Covid-19期间对在线教育的密集纵向研究。

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