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Mathematical analysis / Mathematical optimization / Convex analysis / Analysis / KarushKuhnTucker conditions / Subderivative / Lipschitz continuity / Convex function / Optimization / Invex function
Date: 2013-08-30 00:10:16
Mathematical analysis
Mathematical optimization
Convex analysis
Analysis
KarushKuhnTucker conditions
Subderivative
Lipschitz continuity
Convex function
Optimization
Invex function

Generalized Convexity and Nonsmooth Optimization Diethard Pallaschke Contents of the lecture: 1 Convexity 1.1 Convexity in infinite-dimensionalSpaces 1.2 DC-Functions

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