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Kathleen Lynne Lane; Wendy Peia Oakes; Holly M. Menzies – Grantee Submission, 2023
In this introductory article, we explain the rationale for this special issue: to provide educators and families with effective, practical strategies to increase student engagement and minimize disruption in remote, in person, and hybrid learning environments. We offer this special issue out of respect for the complexities educators and families…
Descriptors: COVID-19, Pandemics, Distance Education, Blended Learning
Amy Shannon; Alex Sciuto; Danielle Hu; Steven P. Dow; Jessica Hammer – Grantee Submission, 2017
Peer feedback is a central activity for project-based design education. The prevalence of devices carried by students and the emergence of novel peer feedback systems enables the possibility of collecting and sharing feedback immediately between students during class. However, pen and paper is thought to be more familiar, less distracting for…
Descriptors: Graduate Students, Computer Games, Peer Evaluation, Computer Mediated Communication
Allen, Laura K.; Snow, Erica L.; McNamara, Danielle S. – Grantee Submission, 2015
This study builds upon previous work aimed at developing a student model of reading comprehension ability within the intelligent tutoring system, iSTART. Currently, the system evaluates students' self-explanation performance using a local, sentence-level algorithm and does not adapt content based on reading ability. The current study leverages…
Descriptors: Reading Comprehension, Reading Skills, Natural Language Processing, Intelligent Tutoring Systems