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how the brain learns to read, sources of reading skill and impairment, how children learn the meaning of words, the impact of stress on learning and development
Secondary mathematics education, urban schooling, alternative certification, critical pedagogy, and the sociology of education.
2. Climate Change Education, 4. Computational Thinking, 1. Science Teacher Education
Policy studies, legislative issues, international special education.
Social learning, social cognition, and cognitive development in early childhood. How children's early learning is fundamentally shaped by the social context in which it occurs.
The impact of college on students, college choice, classroom experiences, minorities in higher education, college outcomes, alumni.
Parenting and children's cognitive and social development, parent involvement in schools and children's achievement, cultural and ethnic differences in parenting behaviors and children's outcomes
mathematics teaching as a societal endeavor, student-centered mathematics teaching, representations of teaching, technology-supported, practice-based teacher education, history of mathematics, history of the mathematics curriculum in the US
Rose's research centers children and youth from historically marginalized communities with particular interests in diverse children's literature, multicultural education, literacy, multiliteracies, diversity and inclusion in the classroom, culturally responsive teaching, culturally sustaining practices, critical consciousness, teacher and student agency and activism, social justice, and equity in education.
Michael Chrzan’s research interests lie at the intersection of education, data science, and equity. He is passionate about leveraging machine learning, causal inference, and natural language processing to solve urgent challenges in K–12 education. His work focuses on the ethical and effective application of AI to promote educational equity, particularly in areas such as scenario modeling for school closures, predictive analytics, and developing tools for use by schools and policymakers. Michael’s projects include analyzing large-scale educational datasets, developing algorithms for decision support, and using quantitative and qualitative methods to unpack the impacts of policy and practice on student outcomes. He is also drawn to exploring how community feedback, parental beliefs, and systemic inequities inform educational reform, striving to ensure that data-driven innovations are driven by those they most effect.