Download presentation
Presentation is loading. Please wait.
1
Solutions for Personalized T-learning Alberto Gil Solla Department of Telematic Engineering University of Vigo (Spain) EuroITV 2005: the 3rd European Conference on Interactive Television Aalborg, Denmark April 1, 2005
2
Introduction Migration from analogue to digital TV Interactive multimedia applications mixed with audiovisual contents Standards to normalize receivers (MHP) T-learning is gaining popularity: Life-long education is essential in the current global economy Engaging applications for digital TV are needed
3
T-learning vs e-learning T-learning is different from e-learning E-learning involves active users TV traditional passive attitude demands an edutainment approach A likely overwhelming increase in T-learning contents will disorient users Tools will be needed to assist them to find interesting personalized educational material
4
AVATAR AdVAnced Telematic search of Audiovisual contents by semantic Reasoning Framework to test recommendation strategies: Profiles matching (collaborative filtering) Semantic reasoning about the user preferences and TV programs (enhanced content-based techniques) The knowledge base is an OWL ontology about the TV domain, describing hierarchies of classes and properties. Specific instances are extracted from TV-Anytime program descriptions Extended to applying the same techniques to recommend personalized T-learning contents
5
User profile Watching habits Learning history Courses Contents Descriptive metadata Recommender agent TV-Anytime LOM LIP
6
IEEE LOM: Learning Object Metadata IEEE standard to describe educational material: contents, purposes, formats, level of difficulty, languages, authors, intended audience, dependencies... Enables search and discovery of contents Enhancements for t-learning needed
7
TV-Anytime To describe: TV programs Content segmentation Users’ personal profiles Users’ viewing habits
8
LIP: Learner Information Package IMS standard to describe any relevant information about the user Combined with LOM, it permits making access to a course dependent on having proved some knowledge
9
Conclusions Applying semantic web techniques can improve course targeting, so optimising advertisement investments Standards are essential
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.