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Ontology Matching with Knowledge Rules

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arxiv 1507.03097 v1 pith:NMABECPS submitted 2015-07-11 cs.AI

Ontology Matching with Knowledge Rules

classification cs.AI
keywords conceptsmatchingontologystrategiesrelationshipsrulesalignmentsdomains
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Ontology matching is the process of automatically determining the semantic equivalences between the concepts of two ontologies. Most ontology matching algorithms are based on two types of strategies: terminology-based strategies, which align concepts based on their names or descriptions, and structure-based strategies, which exploit concept hierarchies to find the alignment. In many domains, there is additional information about the relationships of concepts represented in various ways, such as Bayesian networks, decision trees, and association rules. We propose to use the similarities between these relationships to find more accurate alignments. We accomplish this by defining soft constraints that prefer alignments where corresponding concepts have the same local relationships encoded as knowledge rules. We use a probabilistic framework to integrate this new knowledge-based strategy with standard terminology-based and structure-based strategies. Furthermore, our method is particularly effective in identifying correspondences between complex concepts. Our method achieves substantially better F-score than the previous state-of-the-art on three ontology matching domains.

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