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ECTEL
2009
Springer
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Machine Learning
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ECTEL 2009
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SWeMoF: A Semantic Framework to Discover Patterns in Learning Networks
13 years 11 months ago
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dspace.ou.nl
Marco Kalz, Niels Beekman, Anton Karsten, Diederik
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Added
26 May 2010
Updated
26 May 2010
Type
Conference
Year
2009
Where
ECTEL
Authors
Marco Kalz, Niels Beekman, Anton Karsten, Diederik Oudshoorn, Peter van Rosmalen, Jan van Bruggen, Rob Koper
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Researcher Info
Machine Learning Study Group
Computer Vision