Using machine learning to examine the relationship between asthma and absenteeism

In this study, we found that machine learning was able to effectively estimate student learning outcomes geo-spatially across all the campuses in a large, urban, independent school district. The machine learning showed that key factors in estimating the student learning outcomes included the number...

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Veröffentlicht in:Environmental monitoring and assessment 2019-06, Vol.191 (Suppl 2), p.332-9, Article 332
Hauptverfasser: Lary, Maria-Anna, Allsopp, Leslie, Lary, David J., Sterling, David A.
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Sprache:eng
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Zusammenfassung:In this study, we found that machine learning was able to effectively estimate student learning outcomes geo-spatially across all the campuses in a large, urban, independent school district. The machine learning showed that key factors in estimating the student learning outcomes included the number of days students were absent from school. In turn, one of the most important factors in estimating the number of days a student was absent was whether or not the student had asthma. This highlights the importance of environmental public health for student learning outcomes.
ISSN:0167-6369
1573-2959
DOI:10.1007/s10661-019-7423-2