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Yuyao Tong; Chao Yang; Pengjin Wang; Gaowei Chen – Interactive Learning Environments, 2024
This study examined fostering low-achieving students' epistemic understanding of discourse in knowledge building classrooms using video-based visual learning analytics. The participants were two Grade 9 visual arts classes of low-achieving students. The experimental class (n = 33) engaged in a knowledge building classroom supported by video-based…
Descriptors: Low Achievement, Epistemology, Video Technology, Technology Uses in Education
Yeping Li Ed.; Zheng Zeng Ed.; Naiqing Song Ed. – Advances in STEM Education, 2024
This book provides an international platform for educators from different STEM disciplines to present, discuss, connect, and develop collaborations in two inter-related ways: (1) sharing and discussing changes and innovations in individual discipline-based education in STEM/STEAM, and (2) sharing and discussing the development of interdisciplinary…
Descriptors: STEM Education, Interdisciplinary Approach, Curriculum Development, Instructional Innovation
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