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CS 9010: Semantic Web

CS 9010: Semantic Web. Protégé Lab Paula Matuszek Spring, 2006. Presentation had examples from Protégé. Protégé 3..1 should be installed on these machines. There is a good set of starting tutorials at http://www.co-ode.org/resources/reference/getting_started/

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CS 9010: Semantic Web

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  1. CS 9010: Semantic Web Protégé Lab Paula Matuszek Spring, 2006 CSC 9010 Spring, 2006. Paula Matuszek, Lillian Cassel

  2. Presentation had examples from Protégé. • Protégé 3..1 should be installed on these machines. • There is a good set of starting tutorials at • http://www.co-ode.org/resources/reference/getting_started/ • Work through Loading and Saving OWL Ontologies • Create a new project and start building either our wine ontology or one of your own. CSC 9010 Spring, 2006. Paula Matuszek, Lillian Cassel

  3. Alternatives to the W3C model • What are the alternatives to having "special tags"? Just make search more intelligent? • Semantic Analysis of URLs. (Finding a course website by URL analysis, for instance). • Google and Yahoo intelligent specialized searches • Software Engineering • Data management. What steps, algorithms exist for retrieving, deleting, updating tags • Maintaining tags, applying new ones as the domain shifts, when do pages get tagged? • How do we get there? • Limiting effect of legacy data on innovation. • Agent search engines; learning the semantics and ignoring garbage • Integrating the Semantic Web into applications • Applying an existing general ontology such as Cyc to see how well it can tag current websites. • Machine learning for developing SW pages (eg, AeroDAML) • Machine learning for ontology development • And what’s it like when we do? • Semantic wikipedia, semantic blogging. • What will the web look like if the SW is implemented? What about the 8 billion plus existing pages? CSC 9010 Spring, 2006. Paula Matuszek, Lillian Cassel

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