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Maneka Deanna Brooks – AERA Open, 2023
A portion of EL-identified youth want to exit the EL instructional services to which they are legally entitled. Moreover, institutionalized adultism within EL policy does not provide youths a role in decision-making about these services. As a result, little is known about how individuals who attempt unsanctioned exits conceptualize EL…
Descriptors: English (Second Language), Adults, Student Experience, Elementary Secondary Education
Herrera, Felisha A.; Rodriguez-Operana, Victoria C.; Kovats Sánchez, Gabriela; Cerrillos, Aileen; Marquez, Briana – AERA Open, 2022
Women of color (WOC) continue to be underrepresented in the fields of science, technology, engineering, and mathematics (STEM), where they often experience racism and sexism within disciplinary contexts that have historically privileged men and Whiteness. Participant narratives gained through focus-group and follow-up interviews illuminate the…
Descriptors: Females, Minority Group Students, College Transfer Students, Hispanic American Students
Lucy, Li; Demszky, Dorottya; Bromley, Patricia; Jurafsky, Dan – AERA Open, 2020
Cutting-edge data science techniques can shed new light on fundamental questions in educational research. We apply techniques from natural language processing (lexicons, word embeddings, topic models) to 15 U.S. history textbooks widely used in Texas between 2015 and 2017, studying their depiction of historically marginalized groups. We find that…
Descriptors: Textbooks, United States History, History Instruction, Textbook Content