失学儿童的教育:通过东非的数字学习足迹数据揭示脆弱性的驱动因素

Bethany Huntington, Nicola Pitchford, James Goulding
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 To address the crisis, the ‘Global Learning’ XPRIZE competition challenged teams to develop software empowering marginalised out-of-school children to learn literacy and numeracy skills. Five finalist teams tested their technology with 2041 children using handheld tablets in 172 remote villages in Tanzania.
 Objectives & ApproachOur study examined factors that can predict improvements in learning outcomes, building on the digital footprint data collected from the children participating in the device intervention in the form of app usage and locational and activity data. Additional geospatial features were engineered based on village coordinates, distance to local amenities, services and transport, variables serving as additional potential indicators of isolation and connectedness. These data were linked with child-level factors, including household composition and literacy levels.
 After comparative assessment of machine learning regression models, tree-based models (XGB, RF) were used to establish the optimal predictive performance for literacy and numeracy. Variable importance using SHAP was used to determine which specific contextual variables should be considered before deploying digital interventions to support education and well-being.
 Relevance to Digital FootprintsUtilising digital footprint data to quantify the influence of geospatial and contextual data in digital interventions can offer comprehensive insights to understand and address factors impacting learning outcomes in this context.
 ResultsPrior school attendance, home reading environments and high familial literacy were found to be predictors of higher learning outcomes after a technology-based learning intervention. Environments featuring an unemployed caregiver and few siblings were surprisingly consistent positive predictors, suggesting accompanying and focussed caregiver support as valuable for effective development via digital interventions. Proximity to police stations and health centres were revealed as key predictors, indicating the importance of social and physical connectedness in positive learning environments.
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 To address the crisis, the ‘Global Learning’ XPRIZE competition challenged teams to develop software empowering marginalised out-of-school children to learn literacy and numeracy skills. Five finalist teams tested their technology with 2041 children using handheld tablets in 172 remote villages in Tanzania.
 Objectives & ApproachOur study examined factors that can predict improvements in learning outcomes, building on the digital footprint data collected from the children participating in the device intervention in the form of app usage and locational and activity data. Additional geospatial features were engineered based on village coordinates, distance to local amenities, services and transport, variables serving as additional potential indicators of isolation and connectedness. These data were linked with child-level factors, including household composition and literacy levels.
 After comparative assessment of machine learning regression models, tree-based models (XGB, RF) were used to establish the optimal predictive performance for literacy and numeracy. Variable importance using SHAP was used to determine which specific contextual variables should be considered before deploying digital interventions to support education and well-being.
 Relevance to Digital FootprintsUtilising digital footprint data to quantify the influence of geospatial and contextual data in digital interventions can offer comprehensive insights to understand and address factors impacting learning outcomes in this context.
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引用次数: 0

摘要

介绍,背景全世界约有6.17亿儿童和青少年不具备过健康和有益生活的基本技能。撒哈拉以南非洲受到深刻影响,造成社会和经济依赖,并增加了对强迫婚姻、切割女性生殖器官和精神健康问题的脆弱性。背景因素在这场危机中被认为是至关重要的,但由于传统人口普查和调查数据目前无法克服的缺陷,这些因素很少受到关注。数字足迹数据为填补这一信息缺口——特别是在教育领域——以及学习者的环境如何影响数字学习和未来福祉提供了一条潜在途径。为了解决这一危机,“全球学习”XPRIZE竞赛要求参赛队伍开发软件,帮助边缘化的失学儿童学习识字和算术技能。五个决赛团队在坦桑尼亚172个偏远村庄用手持平板电脑对2041名儿童进行了技术测试。目标,我们的研究基于从参与设备干预的儿童中收集的数字足迹数据,以应用程序使用和位置和活动数据的形式,研究了可以预测学习成果改善的因素。根据村庄坐标、到当地便利设施、服务和交通的距离以及作为隔离和连通性附加潜在指标的变量,设计了其他地理空间特征。这些数据与儿童层面的因素有关,包括家庭组成和文化水平。在对机器学习回归模型进行比较评估后,使用基于树的模型(XGB, RF)建立识字和计算的最佳预测性能。使用SHAP的变量重要性来确定在部署数字干预措施以支持教育和福祉之前应该考虑哪些特定的上下文变量。 与数字足迹的相关性利用数字足迹数据量化数字干预措施中地理空间和背景数据的影响,可以提供全面的见解,以了解和解决在这种情况下影响学习成果的因素。 结果学前教育出勤率、家庭阅读环境和高家庭文化水平是技术学习干预后较高学习成绩的预测因子。一个失业的照顾者和几个兄弟姐妹的环境是令人惊讶的一致的积极预测因素,这表明陪伴和集中的照顾者支持对于通过数字干预有效发展是有价值的。靠近警察局和保健中心是关键的预测因素,表明社会和身体联系在积极的学习环境中的重要性。结论,影响有针对性地改善为校外学习者提供的教育技术,有望帮助发展偏远村庄的学习成果,并减少对相关社会和健康问题的脆弱性。然而,只有在干预措施周围有适当的支持性环境时,才能取得积极成果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Education for out-of-school children: Unpacking driving factors of vulnerability via digital-learning footprint data in East Africa
Introduction & BackgroundApproximately 617 million children and adolescents worldwide do not possess the foundational skills to live healthy and productive lives. Sub-Saharan Africa is profoundly affected, resulting in social and financial dependency and raising vulnerability to forced marriage, female genital mutilation, and mental health issues. Contextual factors are considered critical in this crisis, yet have received little attention due to a currently insurmountable deficit in traditional census and survey data. Digital footprint data offers a potential route to filling this information gap - particularly in education- and how a learner’s environment can impact digital learning and future well-being. To address the crisis, the ‘Global Learning’ XPRIZE competition challenged teams to develop software empowering marginalised out-of-school children to learn literacy and numeracy skills. Five finalist teams tested their technology with 2041 children using handheld tablets in 172 remote villages in Tanzania. Objectives & ApproachOur study examined factors that can predict improvements in learning outcomes, building on the digital footprint data collected from the children participating in the device intervention in the form of app usage and locational and activity data. Additional geospatial features were engineered based on village coordinates, distance to local amenities, services and transport, variables serving as additional potential indicators of isolation and connectedness. These data were linked with child-level factors, including household composition and literacy levels. After comparative assessment of machine learning regression models, tree-based models (XGB, RF) were used to establish the optimal predictive performance for literacy and numeracy. Variable importance using SHAP was used to determine which specific contextual variables should be considered before deploying digital interventions to support education and well-being. Relevance to Digital FootprintsUtilising digital footprint data to quantify the influence of geospatial and contextual data in digital interventions can offer comprehensive insights to understand and address factors impacting learning outcomes in this context. ResultsPrior school attendance, home reading environments and high familial literacy were found to be predictors of higher learning outcomes after a technology-based learning intervention. Environments featuring an unemployed caregiver and few siblings were surprisingly consistent positive predictors, suggesting accompanying and focussed caregiver support as valuable for effective development via digital interventions. Proximity to police stations and health centres were revealed as key predictors, indicating the importance of social and physical connectedness in positive learning environments. Conclusions & ImplicationsTargeted improvement of EdTech provision with out-of-school learners promises to help the development of learning outcomes in remote villages and reduce vulnerabilities to correlated social and health issues. However, positive outcomes can only be achieved when appropriate supporting environments surround interventions.
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