The Good, The Bad, and the Balanced: A Typology of State Merit-Aid Programs for Community College Students

Author:

Hu Xiaodan1ORCID,Fernandez Frank2,Qiu Yuxi3,Capaldi Matt2ORCID

Affiliation:

1. Northern Illinois University, DeKalb, USA

2. University of Florida, Gainesville, USA

3. Florida International University, Miami, USA

Abstract

Objective/Research Question: States have increasingly used merit-based criteria to distribute scholarships and grants, and the dominant conversation on merit-aid programs centers on students attending 4-year colleges and universities. This study examines the characteristics of state-funded merit-aid programs for community college students and provides implications for policymaking to promote educational equity. Methods: With a newly collected dataset capturing a variety of program-level features of state-funded merit-aid policies between 2003 and 2021, we used latent class analysis to identify different types of merit-aid programs for community college students. We present a 3-class model based on model fit indices and practical interpretation of policy designs. Results: Findings indicate three classes of merit-aid programs that extended support to community college students: The Community College Marginalizing Programs ( n = 47), The Community College Targeted Programs ( n = 4), and The Balanced Programs ( n = 17). Conclusions/Contributions: Drawing on Mettler’s notion of the policyscape, we discuss the characteristics of the three types of merit-aid programs and provide implications for designing merit-aid programs to better support community college students and promote educational equity.

Funder

William T. Grant Foundation

Publisher

SAGE Publications

Reference84 articles.

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2. American Association of Community Colleges. (2022). Fast facts 2022. https://www.aacc.nche.edu/2022/02/28/42888/

3. Asparouhov T., Muthén B. (2012). Using Mplus TECH11 and TECH14 to test the number of latent classes (Mplus Web Notes No. 14). https://www.statmodel.com/examples/webnotes/webnote14.pdf

4. Baker D. J., Edwards B., Lambert S. F., Randall G. (2021). The politics of community college districts: A national overview and implications for racial gerrymandering in Texas (CEPA Working Paper No. 21-08). Stanford Center for Education Policy Analysis. https://files.eric.ed.gov/fulltext/ED616275.pdf

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