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Convex analysis / Operations research / Convex optimization / Linear programming / Convex function / Quadratically constrained quadratic program / Optimization problem / Fundamental theorem of linear programming / Shapley–Folkman lemma / Mathematical optimization / Mathematical analysis / Mathematics
Date: 2014-10-28 12:16:17
Convex analysis
Operations research
Convex optimization
Linear programming
Convex function
Quadratically constrained quadratic program
Optimization problem
Fundamental theorem of linear programming
Shapley–Folkman lemma
Mathematical optimization
Mathematical analysis
Mathematics

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