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Efren de la Mora Velasco; Matthew Moreno – Educational Technology Research and Development, 2025
The measurable effects of music in online learning remains a topic of extensive debate, largely due to inconsistent findings within existing literature. Many of these inconclusive results stem from research methodologies that focus on singular perspectives, often overlooking a balance between cognitive challenges and emotional benefits of…
Descriptors: Music, Acoustics, Electronic Learning, Cognitive Processes
Antonenko, Pavlo D.; Toy, Serkan; Niederhauser, Dale S. – Educational Technology Research and Development, 2012
Cluster analysis is a group of statistical methods that has great potential for analyzing the vast amounts of web server-log data to understand student learning from hyperlinked information resources. In this methodological paper we provide an introduction to cluster analysis for educational technology researchers and illustrate its use through…
Descriptors: Electronic Learning, Multivariate Analysis, Educational Technology, Profiles
Hong, Seongyoun; Jung, Insung – Educational Technology Research and Development, 2011
This study identifies a set of competencies displayed in the successful distance learner. It employed a three-phased approach. Phase I, conducted to develop an initial list of competencies, comprised Behavioral Event Interviews with nine successful distance learners. In Phase II, these competencies were reviewed, elaborated and categorized by…
Descriptors: Distance Education, Interviews, Student Characteristics, Competence

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