Author : Mrs.G Akshaya 1
Date of Publication :7th April 2016
Abstract: Recommended Systems for Information & communication technology (ICT-RS) provide personalized services for recommended system. It provides learning objects for teachers and students. User profiling mechanisms are used for recommended system. This paper proposesICT-RSwhich targets to support users in selecting Objects from existing Object Repositories. Automatically constructing their ICT Competence Profiles based on their actions within these ORs.. In technology enhanced learning (Tel) major topic is based on user learning profile but not on student learning profile. So in our proposed system teachers and students have equal priority in selecting a Learning objects
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