Title :
A Semantically Enriched Context-Aware OER Recommendation Strategy and Its Application to a Computer Science OER Repository
Author :
Ruiz-Iniesta, Almudena ; Jimenez-Diaz, Guillermo ; Gomez-Albarran, Mercedes
Author_Institution :
Dept. of Software Eng. & Artificial Intell., Complutense Univ. of Madrid, Madrid, Spain
Abstract :
This paper describes a knowledge-based strategy for recommending educational resources-worked problems, exercises, quiz questions, and lecture notes-to learners in the first two courses in the introductory sequence of a computer science major (CS1 and CS2). The goal of the recommendation strategy is to provide support for personalized access to the resources that exist in open educational repositories. The strategy uses: 1) a description of the resources based on metadata standards enriched by ontology-based semantic indexing, and 2) contextual information about the user (her knowledge of that particular field of learning). The results of an experimental analysis of the strategy´s performance are presented. These demonstrate that the proposed strategy offers a high level of personalization and can be adapted to the user. An application of the strategy to a repository of computer science open educational resources was well received by both educators and students and had promising effects on the student performance and dropout rates.
Keywords :
computer aided instruction; computer science education; educational courses; indexing; information retrieval; meta data; ontologies (artificial intelligence); recommender systems; ubiquitous computing; computer science OER repository; computer science major; computer science open educational resources; contextual information; courses; exercises; introductory sequence; knowledge-based strategy; lecture notes; metadata standards; ontology-based semantic indexing; open educational repositories; personalization level; personalized access; quiz questions; semantically enriched context-aware OER recommendation strategy; strategy performance; student dropout rates; student performance; user knowledge; worked problems; Computer science; Context; Educational institutions; Knowledge based systems; Measurement; Ontologies; Standards; Computer science repositories; knowledge-based recommender systems; open education; users´ experience;
Journal_Title :
Education, IEEE Transactions on
DOI :
10.1109/TE.2014.2309554