English-Learner-Classified Students and Absenteeism: A Within-Group Analysis of Missing School

Author:

Santibañez Lucrecia1ORCID,Gottfried Michael A.2ORCID,Freeman Jennifer A.2ORCID

Affiliation:

1. UCLA, Los Angeles, CA

2. University of Pennsylvania, Philadelphia, PA

Abstract

This article used a rich longitudinal data set from four school districts in California to study absenteeism patterns among students classified as an English learner (EL). We looked at absence patterns overall and disaggregated by EL classification, grade level, and pre/post COVID-19. When their demographic and school-level factors are considered, ELs have fewer absences and are less likely to be chronically absent than non-EL students. This finding is evident for all EL classified groups, although the differences in absenteeism for long-term EL (LTEL) and newcomer EL students are markedly smaller than for other EL subgroups. The negative absenteeism patterns for ELs shifted after the COVID-19 pandemic. EL-classified students experienced higher absenteeism rates during the pandemic even when holding other factors constant. This rising absenteeism trend is most evident for current ELs and LTELs.

Publisher

American Educational Research Association (AERA)

Reference70 articles.

1. Attendance Works and Everyone Graduates Center. (2017). Portraits of change: Aligning school and community resources to reduce chronic absence. https://www.attendanceworks.org/wp-content/uploads/2017/09/Attendance-Works-Portraits-of-Change-Main-Document-Final-Sept.1.pdf

2. Attendance Works. (2023). Monitoring data matters even more: A review of state attendance data policy and practice in school year 2022–23. June 2023. https://www.attendanceworks.org/wp-content/uploads/2019/06/Attendance-Works-Policy-Brief-2023_072723.pdf

3. Assessing the effect of school days and absences on test score performance

4. Pushing Past Myths: Designing Instruction for Long-Term English Learners

5. Effective Instruction for English Learners

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