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Tracy Ediger; Olga Glebova; Michael Waterson; Matthew Nusnbaum – Journal of College Science Teaching, 2024
During the COVID-19 pandemic, it was suddenly necessary to shift college courses online. Many instructors without experience teaching online were faced with decisions about how to structure their courses and support students during the pandemic. In the three introductory STEM courses described in this article, instructors chose to include online…
Descriptors: COVID-19, Pandemics, School Closing, Online Courses
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Koedinger, Kenneth R.; Scheines, Richard; Schaldenbrand, Peter – International Educational Data Mining Society, 2018
The "doer effect" is the assertion that the amount of interactive practice activity a student engages in is much more predictive of learning than the amount of passive reading or watching video the same student engages in. Although the evidence for a doer effect is now substantial, the evidence for a causal doer effect is not as well…
Descriptors: Online Courses, Time Management, Causal Models, Student Behavior
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Wanzer, Dana Linnell; McKlin, Tom; Freeman, Jason; Magerko, Brian; Lee, Taneisha – Computer Science Education, 2020
Background and Context: EarSketch was developed as a program to foster persistence in computer science with diverse student populations. Objective: To test the effectiveness of EarSketch in promoting intentions to persist, particularly among female students and under-represented minority students. Method: Meta-analyses, structural equation…
Descriptors: Intention, Student Participation, Persistence, Computer Science Education
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Rolka, Christine; Remshagen, Anja – International Journal for the Scholarship of Teaching and Learning, 2015
Contextualized learning is considered beneficial for student success. In this article, we assess the impact of context-based learning tools on student grade performance in an introductory computer science course. In particular, we investigate two central questions: (1) does the use context-based learning tools, robots and animations, affect…
Descriptors: Introductory Courses, Computer Science Education, Context Effect, Grades (Scholastic)
Napier, Nannette P.; Dekhane, Sonal; Smith, Stella – Journal of Asynchronous Learning Networks, 2011
This paper describes the conversion of an introductory computing course to the blended learning model at a small, public liberal arts college. Blended learning significantly reduces face-to-face instruction by incorporating rich, online learning experiences. To assess the impact of blended learning on students, survey data was collected at the…
Descriptors: Electronic Learning, Online Courses, Blended Learning, Computer Literacy
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Benson, B.; Arfaee, A.; Choon Kim; Kastner, R.; Gupta, R. K. – IEEE Transactions on Education, 2011
Early exposure to embedded computing systems is crucial for students to be prepared for the embedded computing demands of today's world. However, exposure to systems knowledge often comes too late in the curriculum to stimulate students' interests and to provide a meaningful difference in how they direct their choice of electives for future…
Descriptors: Foreign Countries, Undergraduate Study, High School Students, Summer Programs
Fischman, Josh – Chronicle of Higher Education, 2007
Enrollment in undergraduate computer-science programs has dipped all over the country, and among women it has almost vanished, dropping 70 percent between 2000 and 2005. Observers cite different reasons for the drop, including the dot-com bust a few years ago is one, but universities are beginning to agree on one cause that is within their…
Descriptors: Computers, Programming, Females, Robotics