Universität Duisburg-Essen
Startseite Arbeitsgruppe Informationsysteme

Information retrieval and machine learning for probabilistic schema matching

Citation-Key:
Nottelmann/Straccia:06a
Title:
Information retrieval and machine learning for probabilistic schema matching
Author(s):
Henrik Nottelmann
Umberto Straccia
Journal:
Information Processing and Management
Volume:
43
Page(s):
552-576
Year:
2006

Abstract:
Schema matching is the problem of finding correspondences (mapping rules, e.g. logical formulae) between heterogeneous schemas e.g. in the data exchange domain, or for distributed IR in federated digital libraries. This paper introduces a probabilistic framework, called sPLMap, for automatically learning schema mapping rules, based on given instances of both schemas. Different techniques, mostly from the IR and machine learning fields, are combined for finding suitable mapping candidates. Our approach gives a probabilistic interpretation of the prediction weights of the candidates, selects the rule set with highest matching probability, and outputs probabilistic rules which are capable to deal with the intrinsic uncertainty of the mapping process. Our approach with different variants has been evaluated on several test sets.

BibTeX entry