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Peer reviewedNkambou, R.; Frasson, C.; Gauthier, G.; Rouane, K. – Journal of Interactive Learning Research, 2001
Presents an authoring model and a system for curriculum development in intelligent tutoring systems. Explains CREAM (Curriculum Representation and Acquisition Model) which allows for the creation and organization of the curriculum according to three models concerning the domain, the pedagogy, and the didactic aspects. (Author/LRW)
Descriptors: Authoring Aids (Programming), Curriculum Development, Instructional Design, Intelligent Tutoring Systems
Peer reviewedMatthews, Clive – CALICO Journal, 1993
Recent work in Intelligent Computer Assisted Language Learning (ICALL) has focused on syntactic structure, but little consideration has been given to matters beyond computational efficiency. This paper argues for choosing a formalism that meshes with second-language acquisition work, especially grammar frameworks with a Universal Grammar emphasis,…
Descriptors: Computational Linguistics, Grammar, Intelligent Tutoring Systems, Language Acquisition
Peer reviewedPatel, Ashok; Russell, David; Kinshuk; Oppermann, Reinhard; Rashev, Rossen – Information Services & Use, 1998
Discussion of context focuses on the various contexts surrounding the design and use of intelligent tutoring systems and proposes an initial framework of contexts by classifying them into three major groupings: interactional; environmental, including classifications of knowledge and social environment; and objectival contexts. (Author/LRW)
Descriptors: Classification, Computer System Design, Context Effect, Intelligent Tutoring Systems
Peer reviewedSpector, J. Michael – Instructional Science, 1998
Analyzes claims with regard to GTE's (Generic Tutoring Environment) epistemological foundations and suggests that GTE's assumptions reveal a reductionist bias through the use of formalism. Implications for courseware design and instructional modeling are discussed. (Author/LRW)
Descriptors: Computer Software Development, Courseware, Epistemology, Instructional Design
Peer reviewedDe Diana, Italo P. F.; Ladhani, Al-Noor – Instructional Science, 1998
Discusses GTE (Generic Tutoring Environment) and knowledge-based courseware engineering from an epistemological point of view and suggests some combination of the two approaches. Topics include intelligent tutoring; courseware authoring; application versus acquisition of knowledge; and domain knowledge. (LRW)
Descriptors: Authoring Aids (Programming), Computer Software Development, Courseware, Epistemology
Peer reviewedElen, Jan – Instructional Science, 1998
Discusses GTE (Generic Tutoring Environment) and courseware engineering and argues that GTE's theoretical knowledge base focuses on teaching as a good model for any kind of instruction and thus reduces its generic nature. Two examples of weak automation for instructional design are described that have broader knowledge bases. (Author/LRW)
Descriptors: Automation, Computer Software Development, Courseware, Instructional Design
Peer reviewedDel Soldato, Teresa; Du Boulay, Benedict – Journal of Artificial Intelligence in Education, 1995
Discusses motivation-based tactics and contrasts them with instruction based on student's assumed state of knowledge. Describes an intelligent tutoring system, MORE (MOtivational REactive plan), which combines motivational planning and knowledge domain issues, and a formative evaluation of the tutor teaching Prolog debugging. (Author/JKP)
Descriptors: Computer Assisted Instruction, Computer Software Evaluation, Intelligent Tutoring Systems, Models
Peer reviewedMullins, Roisin; Duan, Yanqing; Hamblin, David – Internet Research, 2001
Describes a study of the training needs of small- and medium-sized enterprises in relation to the Internet, electronic commerce, and electronic data interchange in the United Kingdom, Poland, Slovak Republic, Germany, and Portugal. Discusses the development of a Web-based intelligent training system (WITS) as a result of the study. (Author/LRW)
Descriptors: Business, Foreign Countries, Intelligent Tutoring Systems, Internet
Krejsler, John – Scandinavian Journal of Educational Research, 2005
This article explores conditions for discussing what it means to be professional among teachers, pre-school teachers, nurses, and social workers. From an epistemological point of view it explores how analytical strategies can frame in sufficiently complex ways what it means to be a professional today. It is assumed that at least four main issues…
Descriptors: Preschool Teachers, Social Work, Public Sector, Nurses
Mogharreban, Namdar – Journal of Information Technology Education, 2004
A typical tutorial system functions by means of interaction between four components: the expert knowledge base component, the inference engine component, the learner's knowledge component and the user interface component. In typical tutorial systems the interaction and the sequence of presentation as well as the mode of evaluation are…
Descriptors: Knowledge Level, Student Characteristics, Intelligent Tutoring Systems, Systems Development
Chen, C. M.; Chung, C. J. – Computers & Education, 2008
Since learning English is very popular in non-English speaking countries, developing modern assisted-learning tools that support effective English learning is a critical issue in the English-language education field. Learning English involves memorization and practice of a large number of vocabulary words and numerous grammatical structures.…
Descriptors: Vocabulary, Memory, Vocabulary Development, Non English Speaking
Soh, Leen-Kiat; Fowler, David; Zygielbaum, Art I. – Journal of Educational Technology Systems, 2008
Affinity Learning is a system that allows the user to build a lesson on a subject matter by breaking it down into concepts, misconceptions, assessments, and remediation steps. Examples and questions can also used in these components. Affinity Learning has been found to be effective and can offer critical insights to student learning strategies.…
Descriptors: Learning Strategies, Instructional Effectiveness, Scaffolding (Teaching Technique), Learning Modules
Blessing, Stephen B.; Gilbert, Stephen B.; Ourada, Stephen; Ritter, Steven – International Journal of Artificial Intelligence in Education, 2009
Intelligent Tutoring Systems (ITSs) that employ a model-tracing methodology have consistently shown their effectiveness. However, what evidently makes these tutors effective, the cognitive model embedded within them, has traditionally been difficult to create, requiring great expertise and time, both of which come at a cost. Furthermore, an…
Descriptors: Intelligent Tutoring Systems, Cognitive Processes, Models, Expertise
The Social Semantic Web in Intelligent Learning Environments: State of the Art and Future Challenges
Jovanovic, Jelena; Gasevic, Dragan; Torniai, Carlo; Bateman, Scott; Hatala, Marek – Interactive Learning Environments, 2009
Today's technology-enhanced learning practices cater to students and teachers who use many different learning tools and environments and are used to a paradigm of interaction derived from open, ubiquitous, and socially oriented services. In this context, a crucial issue for education systems in general, and for Intelligent Learning Environments…
Descriptors: Models, Interaction, Educational Technology, Design Requirements
Vlugter, P.; Knott, A.; McDonald, J.; Hall, C. – Computer Assisted Language Learning, 2009
We describe a computer assisted language learning (CALL) system that uses human-machine dialogue as its medium of interaction. The system was developed to help students learn the basics of the Maori language and was designed to accompany the introductory course in Maori running at the University of Otago. The student engages in a task-based…
Descriptors: College Students, Introductory Courses, Malayo Polynesian Languages, Pretests Posttests

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