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Alci, Bulent – Educational Research and Reviews, 2015
This study aims to determine the predictive and explanatory model in terms of university students' academic performance in "General Chemistry" course and their motivational features. The participants were 169 university students in the 1st grade at university. Of the participants, 132 were female and 37 were male students. Regarding…
Descriptors: Foreign Countries, Chemistry, College Science, College Students
Greene, Jeffrey Alan; Costa, Lara-Jeane; Robertson, Jane; Pan, Yi; Deekens, Victor M. – Computers & Education, 2010
Researchers and educators continue to explore how to assist students in the acquisition of conceptual understanding of complex science topics. While hypermedia learning environments (HLEs) afford unique opportunities to display multiple representations of these often abstract topics, students who do not engage in self-regulated learning (SRL) with…
Descriptors: Intelligence, Structural Equation Models, Science Achievement, Prior Learning
Glynn, Shawn M.; Taasoobshirazi, Gita; Brickman, Peggy – Journal of Research in Science Teaching, 2007
A theoretical model of nonscience majors' motivation to learn science was tested by surveying 369 students in a large-enrollment college science course that satisfies a core curriculum requirement. Based on a social-cognitive framework, motivation to learn science was conceptualized as having both cognitive and affective influences that foster…
Descriptors: Learning Motivation, College Science, Careers, Structural Equation Models