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Demir, Serkan – Pegem Journal of Education and Instruction, 2021
The aim of this study is to determine the effect of science lesson activities prepared in accordance with the components and steps of the grid model on the creative thinking skills, problem-solving skills and attitudes of gifted students. In this study, pre-test and post-test design with the control group were utilized among the experimental…
Descriptors: Individualized Instruction, Science Instruction, Elementary School Science, Elementary School Students
Eagle, Michael; Corbett, Albert; Stamper, John; Mclaren, Bruce – International Educational Data Mining Society, 2018
In this work we use prior to tutor-session data to generate an individualized student knowledge model. Intelligent learning environments use student models to individualize curriculum sequencing and help messages. Researchers decompose the learning tasks into sets of Knowledge Components (KCs) that represent individual units of knowledge; the…
Descriptors: Individualized Instruction, Models, Data Analysis, Knowledge Level
Duran, Emilio; Worch, Eric; Boros, Amy; Keeley, Page – Science and Children, 2017
One of the most powerful strategies to support next generation science instruction is the use of instructional models. The Biological Sciences Curriculum Study 5E (Engage, Explore, Explain, Elaborate, and Evaluate) instructional model is arguably the most widely used version of a learning cycle in today's classrooms. The use of the 5Es as an…
Descriptors: Science Instruction, Models, Biology, Science Curriculum
Herranen, Jaana; Aksela, Maija – Studies in Science Education, 2019
Students' questions have an important function in science learning, and in inquiry-based approaches. Inquiry teaching in which the students' own questions are used is promising, but a holistic view of the research and practice is lacking. A systematic review was conducted on 30 articles, both research report articles as well as descriptive and…
Descriptors: Science Instruction, Teaching Methods, Inquiry, Educational Benefits
Silva Mangiante, Elaine; Moore, Adam – Kappa Delta Pi Record, 2015
The Next Generation Science Standards emphasize the need to promote equitable opportunities for all students to engage in science and engineering. This article offers eight tips that educators can use to support students of all abilities, including those with special learning needs, to engage in engineering challenges at the elementary level.
Descriptors: Science Instruction, Engineering Education, Elementary School Students, Academic Standards
Simonson, Michael, Ed.; Seepersaud, Deborah, Ed. – Association for Educational Communications and Technology, 2021
For the forty-fourth time, the Association for Educational Communications and Technology (AECT) is sponsoring the publication of these Proceedings. Papers published in this volume were presented online and onsite during the annual AECT Convention. Volume 1 contains papers dealing primarily with research and development topics. Papers dealing with…
Descriptors: Educational Technology, Technology Uses in Education, Feedback (Response), Course Evaluation
Robberecht, Ronald – Electronic Journal of e-Learning, 2007
E-learning materials often have a linear design where all learners are forced into a single-mode pedagogy, which is contrary to the interaction that occurs in face-to-face learning. Ideally, e-learning materials should be nonlinear, interactive, contain context-sensitive and active learning elements, and accommodate various learning levels and…
Descriptors: Electronic Learning, Educational Technology, Technology Uses in Education, Instructional Materials
Waring, Gene – Technical Education News, 1976
Descriptors: Community Colleges, Course Content, Individualized Instruction, Models
Ayers, Jerry B.; And Others – 1969
This paper presents the rationale, structure, and specifications for a model program for the preparation of chemists, chemical engineers, and high school chemistry teachers. The model (an application of systems technology to program development in higher education) is based on the structure provided by the Georgia Educational Model Specifications…
Descriptors: Chemistry, Educational Specifications, Higher Education, Individualized Instruction
Allen, Michael W.; And Others – 1972
Computer-managed introductory biology programs at Ohio State University and South Dakota State University were designed to implement a generalized computer-managed instructional model. The programs are based upon an individualized instructional philosophy and allow students to select areas of interest, progress at their own rate, and receive…
Descriptors: Biology, Computer Assisted Instruction, Computer Managed Instruction, Higher Education

Matthias, George F.; Snyder, Edward B. – Journal of Geological Education, 1980
The individualized learning model, discussed in this article, uses an efficient feedback mechanism which incorporates an innovative student evaluation program and a unique system of classroom management. The design provides a model for monitoring student progress. (Author/SA)
Descriptors: Academic Achievement, Competency Based Education, Curriculum Development, Earth Science
Andersen, Hans O., Ed. – Viewpoints in Teaching and Learning, 1979
This publication, designed for educators, researchers, and university students, includes articles of theory, opinions, research and practical application pertaining to all levels of educational practice. The first two articles define the place of science in the curriculum, first as a basic study and then as a holistic study. The next three…
Descriptors: Aptitude, Cognitive Development, Content Analysis, Curriculum Development
O'Reilly, Robert P.; Hambleton, Ronald K. – 1971
This paper presents the designs underlying an IPI approach to ninth grade science implemented in the Jamesville-DeWitt schools in New York State. Briefly described are the generalizable instructional model, evaluation systems for assessing individual performance and the effectiveness of the instructional program and the support systems which make…
Descriptors: Academic Achievement, Computer Oriented Programs, Data Processing, Evaluation Methods
Hansen, Duncan N. – 1969
An input output model for individualizing learning in computer-assisted instruction (CAI) is analyzed, specifying a stimulus array, cognitive processes, and response requirements. These three components are discussed as keys to both instructional and curricular development processes; the appropriate use and control of instructional strategies are…
Descriptors: Behavioral Objectives, Branching, College Students, Computer Assisted Instruction
Stamper, John, Ed.; Pardos, Zachary, Ed.; Mavrikis, Manolis, Ed.; McLaren, Bruce M., Ed. – International Educational Data Mining Society, 2014
The 7th International Conference on Education Data Mining held on July 4th-7th, 2014, at the Institute of Education, London, UK is the leading international forum for high-quality research that mines large data sets in order to answer educational research questions that shed light on the learning process. These data sets may come from the traces…
Descriptors: Information Retrieval, Data Processing, Data Analysis, Data Collection