Building partnerships, capacity, and knowledge through a use of newly linked child development and education datasets in Ontario, Canada.

IF 1.6 Q3 HEALTH CARE SCIENCES & SERVICES International Journal of Population Data Science Pub Date : 2022-08-25 DOI:10.23889/ijpds.v7i3.1942
M. Janus, Jeanne Sinclair, J. Hove, Scott Davies
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Abstract

ObjectivesThe objective of this study was to establish a partnership between a university and a jurisdictional education body (Education Quality and Assessment Organization, EQAO) which would allow creation of a linked dataset from kindergarten to later grades in order to examine educational trajectory in mathematics in Ontario. ApproachBuilding on mutual goals of improving the understanding of children’s learning trajectories, we developed a project with an investigator team that included university researchers and representatives of the provincial educational assessment body, to link a database of child development status in kindergarten (Early Development Instrument/EDI data, including neighbourhood socioeconomic/SES index) with academic assessment EQAO data, and received research funding. A deterministic matching process was employed to match the datasets. We examined differences between the unmatched and fully matched cases and constructed a growth mixture model of math scores in grades 3, 6 and 9, with key EDI/SES variables as covariates. ResultsDespite lacking a common identifier, we successfully matched approximately 50% of the EDI cases from 2002-2014 (n=183,771). Effect sizes indicated negligible differences between matched and unmatched, except for SES and child development status, which were poorer for unmatched group. A 3-class solution was the best fit for a 20,000-person subsample of math trajectories based on AIC, BIC, ICL, and entropy values as well as sufficiently high proportions of posterior probabilities, which indicate confidence in class membership. 61% of sample showed steady moderate-high achievement; 9% started high, but declined, and 30% deteriorated then improved. Males, children in low SES, and those with adequate kindergarten EDI outcomes had better math achievement trajectories than females, children in high SES, and those with poor kindergarten outcomes. ConclusionGiven the two datasets were collected without explicit linkage plan, the matching was only 50%, nevertheless resulting in a large database that allows study of early development antecedents of students’ educational trajectories. The partnership between university and EQAO ensures a wide dissemination of results in both academia and policy worlds.
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通过使用加拿大安大略省新连接的儿童发展和教育数据集,建立伙伴关系、能力和知识。
本研究的目的是在一所大学和一个管辖教育机构(教育质量和评估组织,EQAO)之间建立伙伴关系,这将允许创建一个从幼儿园到高年级的关联数据集,以检查安大略省的数学教育轨迹。基于提高对儿童学习轨迹的理解这一共同目标,我们与包括大学研究人员和省教育评估机构代表在内的研究小组开展了一个项目,将幼儿园儿童发展状况数据库(早期发展工具/EDI数据,包括社区社会经济/SES指数)与学术评估EQAO数据联系起来,并获得了研究资金。采用确定性匹配过程对数据集进行匹配。我们研究了未匹配和完全匹配的情况下的差异,并以关键的EDI/SES变量为协变量,构建了3,6和9年级数学成绩的增长混合模型。尽管缺乏共同的标识符,但我们成功匹配了2002-2014年约50%的EDI病例(n=183,771)。效应大小表明匹配组和未匹配组之间的差异可以忽略不计,除了社会经济地位和儿童发展状况,未匹配组的差异更小。3类解决方案最适合基于AIC、BIC、ICL和熵值的20,000人数学轨迹子样本,以及足够高的后验概率比例,这表明对类成员的信心。61%的学生表现出稳定的中高成绩;9%的人开始时很高,但后来有所下降,30%的人先是恶化,然后好转。男性、社会经济地位低的儿童和幼儿园EDI结果良好的儿童比女性、社会经济地位高的儿童和幼儿园成绩差的儿童有更好的数学成就轨迹。结论在没有明确联动计划的情况下,两个数据集的匹配度仅为50%,但仍然形成了一个大型数据库,可以研究学生教育轨迹的早期发展前因。大学与高等教育问责局之间的伙伴关系确保了成果在学术界和政策界的广泛传播。
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来源期刊
CiteScore
2.50
自引率
0.00%
发文量
386
审稿时长
20 weeks
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