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Roxanne Hughes; Amal Ibourk; Lauren Wagner; Kelli Jones; Samantha Crawford – Journal of Research in Science Teaching, 2024
Both K-12 schools and STEM disciplines are embedded in White supremacy and exclusion, making it that much harder for Black women to maintain an interest and sense of belonging in STEM. Through a Critical Race Feminism methodology, we tell the counterstories of our two co-authors, two Black women, over the course of their lives. Through these…
Descriptors: STEM Education, Racism, African Americans, Females
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Lori Rubino-Hare; Brooke A. Whitworth; Francis Boateng; Nena Bloom – Journal of Research in Science Teaching, 2024
Advances in online geospatial technologies (GST) have expanded access to K-12 classrooms which has implications for the support teachers require to effectively integrate GSTs to promote learning. Previous studies have shown the impact of GST-integrated lessons on student engagement, spatial thinking skills, and/or content knowledge; however, most…
Descriptors: Geography Instruction, Geographic Information Systems, Elementary Secondary Education, Technology Integration
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Harper, Akira; Kayumova, Shakhnoza – Journal of Research in Science Teaching, 2023
Black and Brown girls are underrepresented in science, technology, engineering, and math (STEM) fields. Although studies have examined the reasons for this by exploring Black and Brown girls' experiences based on culture, gender, and race, there is a need for specifically understanding how language contributes to racialized experiences in science…
Descriptors: STEM Education, Science Education, Minority Group Students, Females
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Lihua Tan; Fu Chen; Bing Wei – Journal of Research in Science Teaching, 2024
Through the lens of science capital, this research aims to detect the key factors and their main effects in identifying students with science-related career expectations. A machine learning approach (i.e., random forest) was employed to analyze a dataset of 519,334 15-year-old students from the Programme for International Student Assessment (PISA)…
Descriptors: Science Education, STEM Careers, Expectation, Student Attitudes
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Chen Chen; Tamer Said; Philip M. Sadler; Anthony Perry; Gerhard Sonnert – Journal of Research in Science Teaching, 2024
This study examines the often-heard assumption in science teaching that some pedagogies in science classrooms can serve a dual function--improve the student-perceived teacher quality and improve students' affinity to STEM professions. We asked 7507 freshmen from 40 colleges in the United States, selected in a stratified random procedure, to…
Descriptors: STEM Careers, STEM Education, Teacher Effectiveness, Science Instruction