论文标题
通过隐藏的马尔可夫模型推断学区学习方式在19009年大流行期间
Inferring school district learning modalities during the COVID-19 pandemic with a hidden Markov model
论文作者
论文摘要
在这项研究中,研究了美国各地公立学校提供的学习方式,以跟踪提供全人,混合和完全遥远学习的学校比例的变化。 Burbio,MCH战略数据,美国企业学院的学习追踪器和个人州仪表板的回报率报告了从2020年9月到2021年6月的14,688个独特学区的学习方式。需要模型将这些数据结合起来,以提供对全国模式的更完整描述。 使用隐藏的马尔可夫模型(HMM)来每周推断每个地区最可能的学习方式。该方法的时空覆盖率比任何单个数据源产生的时空覆盖率更高,并且与四个数据源中的三个相比,与任何其他单一源相比,三个数据源的一致性更高。该模型的产出显示,提供全人间学习的地区的百分比从2020年9月的40.3%上升到2021年6月的54.7%,在45个州和城市和农村地区都增加了。这种类型的概率模型可以作为融合不完整和矛盾的数据来源的工具,以支持公共卫生监视和研究工作。
In this study, learning modalities offered by public schools across the United States were investigated to track changes in the proportion of schools offering fully in-person, hybrid and fully remote learning over time. Learning modalities from 14,688 unique school districts from September 2020 to June 2021 were reported by Burbio, MCH Strategic Data, the American Enterprise Institute's Return to Learn Tracker and individual state dashboards. A model was needed to combine and deconflict these data to provide a more complete description of modalities nationwide. A hidden Markov model (HMM) was used to infer the most likely learning modality for each district on a weekly basis. This method yielded higher spatiotemporal coverage than any individual data source and higher agreement with three of the four data sources than any other single source. The model output revealed that the percentage of districts offering fully in-person learning rose from 40.3% in September 2020 to 54.7% in June of 2021 with increases across 45 states and in both urban and rural districts. This type of probabilistic model can serve as a tool for fusion of incomplete and contradictory data sources in support of public health surveillance and research efforts.