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Third IEEE International Conference on Advanced Learning Technologies (ICALT'03)
Athens, Greece
July 09-July 11
ISBN: 0-7695-1967-9
Jan Brase, University of Hannover
Mark Painter, Learning Lab Lower Saxony and University of Braunschweig
Wolfgang Nejdl, University of Hannover and Learning Lab Lower Saxony

Learning Objects Metadata aims at describing educational resources in order to allow better reusability and retrieval. Unfortunately, annotating complete courses thoroughly with LOM metadata can be a tedious task. In this poster we show how additional inference rules can make this task easier, and allow us to derive additional metadata from existing ones. Additionally, using these rules as integrity constraints helps us to define the constraints on LOM fields, thus taking an important step towards a complete axiomatization of LOM metadata (with the goal of transforming the LOM definitions from a simple syntactical description into a complete ontology). We used RDF metadata descriptions and an inference language explicitly developed for RDF (TRIPLE) to represent metadata and axioms.

We show how these rules can be applied for the extensions of course metadata, the creation of views onto the metadata or metadata consistency checking.

Citation:
Jan Brase, Mark Painter, Wolfgang Nejdl, "Completing LOM — How Additional Axioms Increase the Utility of Learning Object Metadata," icalt, pp.493, Third IEEE International Conference on Advanced Learning Technologies (ICALT'03), 2003
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