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A Science Model Driven Retrieval Prototype (1101.1637v1)

Published 9 Jan 2011 in cs.IR and cs.DL

Abstract: This paper is about a better understanding on the structure and dynamics of science and the usage of these insights for compensating the typical problems that arises in metadata-driven Digital Libraries. Three science model driven retrieval services are presented: co-word analysis based query expansion, re-ranking via Bradfordizing and author centrality. The services are evaluated with relevance assessments from which two important implications emerge: (1) precision values of the retrieval service are the same or better than the tf-idf retrieval baseline and (2) each service retrieved a disjoint set of documents. The different services each favor quite other - but still relevant - documents than pure term-frequency based rankings. The proposed models and derived retrieval services therefore open up new viewpoints on the scientific knowledge space and provide an alternative framework to structure scholarly information systems.

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Authors (3)
  1. Philipp Mayr (111 papers)
  2. Philipp Schaer (63 papers)
  3. Peter Mutschke (22 papers)
Citations (1)

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