Multiplying Disadvantages in U.S. High Schools: An Intersectional Analysis of the Interactions among Punishment and Achievement Trajectories
Principal Investigator(s): View help for Principal Investigator(s) Jason Jabbari, Washington University in St. Louis
Version: View help for Version V1
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Project Citation:
Jabbari, Jason. Multiplying Disadvantages in U.S. High Schools: An Intersectional Analysis of the Interactions among Punishment and Achievement Trajectories. Ann Arbor, MI: Inter-university Consortium for Political and Social Research [distributor], 2024-01-10. https://doi.org/10.3886/E197221V1
Project Description
Summary:
View help for Summary
We
examine recent process models of accumulated disadvantage with an intersectional
lens in order to provide a more complete picture of how disadvantages across
punishment and math trajectories can accumulate over time and disparately
affect marginalized race-gender groups. Using structural equation modeling
(SEM) with a nationally representative
longitudinal
study of high school students (HSLS-09), we found that punishment trajectories
were influenced by math and vice versa, as well as that that these
relationships differed across math performance and various aspects of math
attitudes, including efficacy, utility, and identity.
Furthermore,
we found that gender, race, and race-gender groups experienced significantly
different relationships. When considering the intersection of punishment and
math disadvantages, these differences appear to not only accumulate
disadvantages within punishment and math trajectories, but also across them for
marginalized race-gender groups. This was especially true for Black-males. We
conclude with a discussion of implications for policy and practice.
Please note: All data for the study comes from HSLS:09 Restricted Use Data Files (RUF). To obtain the HSLS:09 RUF from NCES, see the following: https://nces.ed.gov/pubsearch/licenses.asp
Please note: All data for the study comes from HSLS:09 Restricted Use Data Files (RUF). To obtain the HSLS:09 RUF from NCES, see the following: https://nces.ed.gov/pubsearch/licenses.asp
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