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Early Warning Systems and Targeted Interventions for Student Success in Online Courses

Early Warning Systems and Targeted Interventions for Student Success in Online Courses

Copyright: © 2020 |Pages: 374
ISBN13: 9781799850748|ISBN10: 1799850749|EISBN13: 9781799850755|ISBN13 Softcover: 9781799851479
DOI: 10.4018/978-1-7998-5074-8
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MLA

Glick, Danny, et al., editors. Early Warning Systems and Targeted Interventions for Student Success in Online Courses. IGI Global, 2020. https://doi.org/10.4018/978-1-7998-5074-8

APA

Glick, D., Cohen, A., & Chang, C. (Eds.). (2020). Early Warning Systems and Targeted Interventions for Student Success in Online Courses. IGI Global. https://doi.org/10.4018/978-1-7998-5074-8

Chicago

Glick, Danny, Anat Cohen, and Chi Chang, eds. Early Warning Systems and Targeted Interventions for Student Success in Online Courses. Hershey, PA: IGI Global, 2020. https://doi.org/10.4018/978-1-7998-5074-8

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Online learning has increasingly been viewed as a possible way to remove barriers associated with traditional face-to-face teaching, such as overcrowded classrooms and shortage of certified teachers. While online learning has been recognized as a possible approach to deliver more desirable learning outcomes, close to half of online students drop out as a result of student-related, course-related, and out-of-school-related factors (e.g., poor self-regulation; ineffective teacher-student, student-student, and platform-student interactions; low household income). Many educators have expressed concern over students who unexpectedly begin to struggle and appear to fall off track without apparent reason. A well-implemented early warning system, therefore, can help educators identify students at risk of dropping out and assign and monitor interventions to keep them on track for graduation. Despite the popularity of early warning systems, research on their design and implementation is sparse.

Early Warning Systems and Targeted Interventions for Student Success in Online Courses is a cutting-edge research publication that examines current theoretical frameworks, research projects, and empirical studies related to the design, implementation, and evaluation of early warning systems and targeted interventions and discusses their implications for policy and practice. Moreover, this book will review common challenges of early warning systems and dashboard design and will explore design principles and data visualization tools to make data more understandable and, therefore, more actionable. Highlighting a range of topics such as curriculum design, game-based learning, and learning support, it is ideal for academicians, policymakers, administrators, researchers, education professionals, instructional designers, data analysts, and students.

Table of Contents

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Front Materials
Title Page
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Copyright Page
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Advances in Educational Technologies and Instructional Design (AETID) Book Series
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Editorial Advisory Board
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Preface
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Chapters
Chapter 1
Cognitive Domain  (pages 24-24)
This section focuses on cognitive signals of risk, such as student performance on test items, student coursework data, and academic performance.
Cognitive Domain
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Chapter 2
Affective Domain  (pages 112-112)
This section focuses on affective signals of risk, such as student attitudes and perceptions, social-emotional ties, and instructor teaching presence.
Affective Domain
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Chapter 3
Behavioral Domain  (pages 199-199)
This section focuses on behavioral risk signals, such as student logins and time on task, drawn from the course learning management system.
Behavioral Domain
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Chapter 4
Holistic Domain  (pages 259-259)
This section incorporates the three domains—cognitive, affective, and behavioral—thus enabling the drawing of more holistic inferences into what causes students to drop out.
Holistic Domain
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Back Materials
Compilation of References
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About the Contributors
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Index
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