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Dagstuhl-Seminar 05071

Machine Learning for the Semantic Web

( 13. Feb – 18. Feb, 2005 )

(zum Vergrößern in der Bildmitte klicken)

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Bitte benutzen Sie folgende Kurz-Url zum Verlinken dieser Seite: https://www.dagstuhl.de/05071

Organisatoren


Externe Veranstaltungsseite

Impacts
  • Proceedings of the Dagstuhl seminar on machine learning for the semantic web : Schloss Dagstuhl, International Conference and Research Center for Computer Science, Wadern, Germany, 13 - 18 February 2005 - Kushmerick, Nicholas; Ciravegna, Fabio; Doan, AnHai; Knoblock, Craig; Staab, Steffen - 2005. - getr. Zählung.

Motivation

The Semantic Web has attracted great attention since the vision was first articulated several years ago. In a nutshell, the Semantic Web will augment conventional Web content with explicit machine-processable semantic metadata, enabling a variety of automated content manipulation and aggregation.

As demonstrated by the first two International Semantic Web Conferences, the initial "futuristic vision" has matured into a carefully crafted set of substantive technical proposals, such as the Resource Description Framework (RDF) and the Web Ontology Language (OWL). However, it is widely recognized the Semantic Web will never "take off" until a critical mass of semantic metadata has been deployed. Many SW researchers have therefore built various tools to help developers attach semantic metadata to their content.

More ambitously, machine learning and other artificial intelligence techniques are being developed that generate the requisite semantic metadata in a semi-automated or even entirely automated fashion. For example, machine learning algorithms for information extraction allow large legacy text repositories to be rapidily enriched with semantic metadata, and machine learning approaches to ontology learning and matching are being developed for the Semantic Web context.

The goal of this seminar is to assemble the leading researchers who work at the intersection of machine learning and the Semantic Web, in order to review progress and identify the most significant opportunities and challenges over the next several years. We will also invite leading figures from the "conventional" (hand-crafted metadata) Semantic Web community, to ensure both that our technology is fully appreciated by the Semantic Web community, and that the machine learning community focuses on important and realistic problems.

The seminar will focus specifically on the following five topics:

  1. Automated document annotation;
  2. Ontology learning and maintenance;
  3. Ontology mapping and merging;
  4. Service discovery; and
  5. Content cleaning and normalization.

Teilnehmer
  • Eneko Agirre (Universidad del País Vasco - Donostia, ES)
  • Nathalie Aussenac-Gilles (Paul Sabatier University - Toulouse, FR)
  • Roberto Basili (University of Rome "Tor Vergata", IT)
  • Misha Bilenko (University of Texas - Austin, US)
  • Janez Brank (Jozef Stefan Institute - Ljubljana, SI)
  • Christopher Brewster (University of Sheffield, GB)
  • Paul Buitelaar (DFKI - Saarbrücken, DE) [dblp]
  • Michal Ceresna (TU Wien, AT)
  • Sam Chapman (University of Sheffield, GB)
  • Philipp Cimiano (KIT - Karlsruher Institut für Technologie, DE) [dblp]
  • Srinandan Dasmahapatra (University of Southampton, GB)
  • Marc Ehrig (KIT - Karlsruher Institut für Technologie, DE)
  • David W. Embley (Brigham Young Univ., US) [dblp]
  • Aidan Finn (University College Dublin, IE)
  • Avigdor Gal (Technion - Haifa, IL) [dblp]
  • Luca Gilardoni (Quinary SPA - Milan, IT)
  • Georg Gottlob (TU Wien, AT) [dblp]
  • Gunnar Grimnes (University of Aberdeen, GB)
  • Marko Grobelnik (Jozef Stefan Institute - Ljubljana, SI) [dblp]
  • Andreas Heß (VU University Amsterdam, NL)
  • Andreas Hotho (Universität Kassel, DE) [dblp]
  • Neil Ireson (University of Sheffield, GB)
  • Jose Iria (University of Sheffield, GB)
  • Eddie Johnston (University College Dublin, IE)
  • Craig A. Knoblock (USC - Marina del Rey, US) [dblp]
  • Nicholas Kushmerick (University College Dublin, IE)
  • Martin Labsky (University of Economics - Prague, CZ)
  • Alberto Lavelli (Centro Ricerche FIAT - Trento, IT)
  • Louis Licamele (University of Maryland - College Park, US)
  • Bernardo Magnini (Centro Ricerche FIAT - Trento, IT) [dblp]
  • Patrick Marty (University of Lille III, FR)
  • Andrew McCallum (University of Massachusetts - Amherst, US) [dblp]
  • Brian McLernon (University College Dublin, IE)
  • Knud Möller (National University of Ireland - Galway, IE)
  • Claire Nédellec (INRA - MIA - Jouy-en-Josas, FR)
  • Georgios Paliouras (Demokritos - Athens, GR)
  • Terry Payne (University of Southampton, GB) [dblp]
  • Marie-Laure Reinberger (University of Antwerp, BE)
  • German Rigau (Universidad del País Vasco - Donostia, ES)
  • Marta Sabou (VU University Amsterdam, NL) [dblp]
  • Derek Sleeman (University of Aberdeen, GB)
  • Steffen Staab (Universität Koblenz-Landau, DE) [dblp]
  • Katia Sycara (Carnegie Mellon University, US) [dblp]
  • Mike Uschold (Boeing Research & Technology - Seattle, US)
  • Johanna Völker (KIT - Karlsruher Institut für Technologie, DE) [dblp]