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Xiaoman Wang; Rui Huang; Max Sommer; Bo Pei; Poorya Shidfar; Muhammad Shahroze Rehman; Albert D. Ritzhaupt; Florence Martin – Journal of Educational Computing Research, 2024
The purpose of this research study was to examine the overall effect of adaptive learning systems deployed using artificial intelligence technology across a range of relevant variables (e.g., duration, student level, etc.). Following a systematic procedure, this meta-analysis examined literature from 18 academic databases and identified N = 45…
Descriptors: Meta Analysis, Outcomes of Education, Artificial Intelligence, Learning Management Systems
Guo, Yan Ru; Goh, Dion Hoe-Lian – Journal of Educational Computing Research, 2015
Over the past decade, computer games and other interactive technologies have shown great potential when used in innovative ways to enhance learning. It is now known that learning is associated not only with cognitive ability but also with affect. The incorporation of affective embodied pedagogical agents (EPAs) in computer programs for learning…
Descriptors: Meta Analysis, Affective Behavior, Educational Technology, Instructional Effectiveness
Nakic, Jelena; Granic, Andrina; Glavinic, Vlado – Journal of Educational Computing Research, 2015
This study brings an evidence-based review of user individual characteristics employed as sources of adaptation in recent adaptive learning systems. Twenty-two user individual characteristics were explored in a systematically designed search procedure, while 17 of them were identified as sources of adaptation in final selection. The content…
Descriptors: Individual Characteristics, Cognitive Ability, Educational Technology, Web Based Instruction

Repman, Judi – Journal of Educational Computing Research, 1993
Discussion of collaborative learning focuses on a study of seventh-grade social studies students that was conducted to determine whether incorporating structure and training into collaborative, computer-based learning would improve achievement, self-esteem, or increase the number of explanations given. Treatment groups that included regular and…
Descriptors: Academic Achievement, Affective Behavior, Analysis of Variance, Computer Assisted Instruction