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Zhou, Liqiu; Xue, Sijia; Li, Ruiqian – SAGE Open, 2022
While online education has been increasingly adopted in different educational systems across the world, it is still a recent phenomenon in developing countries such as China. Various factors could affect learners' adoption of technology, including their online learning. In this study, we took the Technology Acceptance Model as the theoretical…
Descriptors: Online Courses, Integrated Learning Systems, Technology Integration, Intention
Jirasatjanukul, Kanokrat; Jeerungsuwan, Namon – International Education Studies, 2018
The objectives of the research were to (1) design an instructional model based on Connectivism and Constructivism to create innovation in real world experience, (2) assess the model designed--the designed instructional model. The research involved 2 stages: (1) the instructional model design and (2) the instructional model rating. The sample…
Descriptors: Instructional Innovation, Curriculum Design, Constructivism (Learning), Models
Hinchliffe, Lisa Janicke; Rand, Allison; Collier, Jillian – Communications in Information Literacy, 2018
The process of learning includes not only success in developing knowledge, skills, and abilities but also mistakes and errors that impede such success. In any domain of learning, instructors will have developed a sense of the typical errors learners make; however, there has been no systematic investigation and documentation of predictable…
Descriptors: Information Literacy, College Freshmen, Focus Groups, Misconceptions
Matijevic, Milan; Opic, Siniša – Online Submission, 2016
In Croatian classrooms it is possible to observe teaching scenarios that follow the features of constructivist and traditional teaching theories and many variants and combinations of teaching didactics that are student centered and those that are teacher centered. Teachers struggle to find their way in the selection and design of a media…
Descriptors: Foreign Countries, Predictor Variables, Instructional Design, Educational Environment
Okimoto, Hae; Heck, Ronald – Community College Journal of Research and Practice, 2015
At community colleges, student preparedness for college-level work is a significant initial barrier. Over 70% of community college students are reported to be inadequately prepared for college mathematics. Because students need to pass college-level math in order to enroll in subsequent courses required for their majors or to complete general…
Descriptors: Community Colleges, Developmental Studies Programs, Remedial Mathematics, Instructional Design
Bodur, Yasar – International Journal for the Scholarship of Teaching and Learning, 2010
This article is a response to "Applying Graduate Student Perceptions of Task Engagement to Enhance Learning Conditions" by Jay Caulfield (2010). Caulfield's study on graduate students' perceptions of task engagement was an important one for people who are involved in graduate level teaching. The issues of motivation can easily be…
Descriptors: Graduate Students, Learning Motivation, Learner Engagement, Definitions
Sansone, Carol; Fraughton, Tamra; Zachary, Joseph L.; Butner, Jonathan; Heiner, Cecily – Educational Technology Research and Development, 2011
Successful online students must learn and maintain motivation to learn. The Self-regulation of Motivation (SRM) model (Sansone and Thoman 2005) suggests two kinds of motivation are essential: Goals-defined (i.e., value and expectancy of learning), and experience-defined (i.e., whether interesting). The Regulating Motivation and Performance Online…
Descriptors: Electronic Learning, Student Motivation, Online Courses, Learning Motivation
Barrus, Angela – ProQuest LLC, 2013
This study empirically evaluated the effectiveness of the instructional design, learning tools, and role of the teacher in three versions of a semester-long, high-school remedial Algebra I course to determine what impact self-regulated learning skills and learning pattern training have on students' self-regulation, math achievement, and…
Descriptors: Learning Strategies, Independent Study, High School Students, Instructional Design
Liu, Chien-Jen; Yang, Shu Ching – Computers & Education, 2012
The goal of this study is to better understand how the study participants' cognitive discourse is displayed in their learning transaction in an asynchronous, text-based conferencing environment based on Garrison's Practical Inquiry Model (2001). The authors designed an online information ethics course based on Bloom's taxonomy of educational…
Descriptors: Educational Objectives, Prior Learning, Ethics, Secondary School Students
Francis, Linda M. – ProQuest LLC, 2009
The study examined interest, a unique affective construct distinct from motivation, as an important instructional design consideration. New interest theory suggests that interest develops along a continuum, and at its earliest stages, may be triggered through intentional use of interesting materials and environments. Instructional designers need…
Descriptors: Instructional Design, Student Interests, Learner Engagement, Student Attitudes
Ke, Fengfeng; Xie, Kui – Internet and Higher Education, 2009
Adult students have become the new majority in online distance education. Research in online distance education, however, is still predominantly based on the historical perspective of the traditional student profile. This study examines adult students' learning engagement in online courses and explores the impact of online course design models and…
Descriptors: Adult Students, Program Effectiveness, Learner Engagement, Models
Ounaies, Houda Zouari; Jamoussi, Yassine; Ben Ghezala, Henda Hajjami – Themes in Science and Technology Education, 2008
Currently, e-learning systems are mainly web-based applications and tackle a wide range of users all over the world. Fitting learners' needs is considered as a key issue to guaranty the success of these systems. Many researches work on providing adaptive systems. Nevertheless, evaluation of the adaptivity is still in an exploratory phase.…
Descriptors: Media Adaptation, Instructional Design, Electronic Learning, Management Information Systems
Boyer, Kristy Elizabeth, Ed.; Yudelson, Michael, Ed. – International Educational Data Mining Society, 2018
The 11th International Conference on Educational Data Mining (EDM 2018) is held under the auspices of the International Educational Data Mining Society at the Templeton Landing in Buffalo, New York. This year's EDM conference was highly competitive, with 145 long and short paper submissions. Of these, 23 were accepted as full papers and 37…
Descriptors: Data Collection, Data Analysis, Computer Science Education, Program Proposals
Dijkstra, Sanne – Educational Technology, 1991
Discussion of learning how to solve problems focuses on instructional design models and how students construct their knowledge and learn skills. Topics discussed include conceptual knowledge; procedural knowledge and skills; knowledge representation; causal knowledge; types of knowledge and relevant skills; knowledge acquisition; prediction and…
Descriptors: Instructional Design, Learning Processes, Models, Predictor Variables
Lawrason, Robin E.; Hedberg, John G. – Journal of Instructional Development, 1978
The purpose of this study was to develop models that could demonstrate those relationships between factors in the instructional development process that affect the success of the overall project; however, the data generated cannot support such models at this time. Implications for developers are discussed. (Author/JEG)
Descriptors: Educational Development, Educational Technology, Higher Education, Instructional Design

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