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Coping with Incomplete Information in Scheduling - Stochastic and Online Models
14 years 5 months ago
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version of this extended abstract is published as [6].
Nicole Megow
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Added
08 Jun 2010
Updated
08 Jun 2010
Type
Conference
Year
2007
Where
OR
Authors
Nicole Megow
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Researcher Info
Operations Research Study Group
Computer Vision