Bridging the science achievement gap: Using survival analysis to assess the impact of center-based early childhood programs on children with disabilities

Wonkyung Jang

Article ID: 6776
Vol 8, Issue 16, 2024

VIEWS - 30 (Abstract)

Abstract


Understanding the factors that influence early science achievement is crucial for developing effective educational policies and ensuring equity within the education system. Despite its importance, research on the patterns of young children achieving science learning milestones and the factors that can reduce disparities between students with and without disabilities remains limited. This study analyzes data from the Early Childhood Longitudinal Study of Kindergarten Cohort 2011 (ECLS-K: 2011), which includes 18,174 children from 1328 schools across the United States, selected through a complex sampling process and spanning kindergarten to 5th grade. Utilizing survival analysis, the study finds that children with disabilities achieve science milestones later than their peers without disabilities, with these disparities persisting from early grades. The research highlights the effectiveness of center-based programs in enhancing science learning, particularly in narrowing the achievement gap between children with and without disabilities. These findings contribute to the broader discourse on equity in the education system and policy by introducing novel methodologies for assessing the frequency and duration of science learning milestones, and by providing insights into effective strategies that support equitable science education.


Keywords


education system; science achievement; disparities; students with disabilities; societal equity; center-based programs; education policy; survival analysis

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DOI: https://doi.org/10.24294/jipd6776

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