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CAISE
2008
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Information Technology
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CAISE 2008
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Probabilistic Metamodel Merging
14 years 29 days ago
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sunsite.informatik.rwth-aachen.de
This paper proposes the use Bayesian networks for the automatic merging of metamodels. The proposed Bayesian networks calculate the probability that a merge of two metamodel elements is suitable, thus suggesting what to merge.
Robert Lagerström, Moustafa Chenine, Pontus J
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Automatic Merging
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Bayesian Networks
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CAISE 2008
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Information Management
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Added
12 Oct 2010
Updated
12 Oct 2010
Type
Conference
Year
2008
Where
CAISE
Authors
Robert Lagerström, Moustafa Chenine, Pontus Johnson, Ulrik Franke
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Researcher Info
Information Technology Study Group
Computer Vision