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Free, publicly-accessible full text available June 10, 2026
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Chen, B; Bartucz, J; Scharber, C; Rao, V; DeLiema, D (, AERA 2023 Annual Conference)Data science is increasingly relevant to daily life and has garnered significant attention in education. While data science education has been traditionally focused on technical training, justice considerations are increasingly brought up given growing concerns over fairness and justice in data science. This paper introduces a framework for justice-oriented data science education that comprises five areas grounded in a broad range of literature. To explore and refine the framework in authentic contexts, we applied it to discourse data from one participatory design workshop with teachers. Analysis demonstrated the presence of this framework’s areas and their rich connections in teachers’ thinking. The framework offers educators a tool to integrate data science, justice issues, and disciplinary content in K-12 classrooms.more » « less
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Carpenter, Z.; Wang, Y.; DeLiema., D.; Kendeou, P.; Shaffer, D.W. (, LAK23 Conference Proceedings: Toward Trustworthy Learning Analytics: The Thirteenth International Conference on Learning Analytics & Knowledge)Hilliger, I.; Khosravi, H.; Rienties, B.; Dawson, S. (Ed.)
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Kafai, Y. B.; Biswas, G.; Hutchins, N.; Snyder, C.; Brennan, K.; Haduoan, P.; DesPortes, K.; Fong, M.; Flood, V.J.; Walker-van Aalst, O.; et al (, The Interdisciplinarity of the Learning Sciences, 14th International Conference of theLearning Sciences (ICLS) 2020)Gresalfi, M.; Horn, I. (Ed.)The design of most learning environments focuses on supporting students in making, constructing, and putting together projects on and off the screen, with much less attention paid to the many issues—problems, bugs, or traps—that students invariably encounter along the way. In this symposium, we present different theoretical and disciplinary perspectives on understanding how learners engage in debugging applications on and off screen, examine learners’ mindsets about debugging from middle school to college students and teachers, and present pedagogical approaches that promote strategies for debugging problems, even having learners themselves design problems for others. We contend that learning to identify and fix problems—debug, troubleshoot, or get unstuck—in completing projects provides a productive space in which to explore multiple theoretical perspectives that can contribute to our understanding of learning and teaching critical strategies for dealing with challenges in learning activities and environments.more » « less
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