Duality for nonconvex optimization and its applications (Q1329205)
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scientific article; zbMATH DE number 598212
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Duality for nonconvex optimization and its applications |
scientific article; zbMATH DE number 598212 |
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Duality for nonconvex optimization and its applications (English)
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21 July 1994
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The main result of the paper is the following interesting theorem: Let \(Y\) be a (locally convex) normed space and \(g: Y\to \overline{\mathbb{R}}\) be (weakly) l.s.c. at \(y_ 0\in Y\). Suppose that there exists \(y^*_ 0\in Y^*\) such that \(g^*\) is (Gateaux) Fréchet differentiable at \(y^*_ 0\) and \(\nabla g^*(y^*_ 0)= y_ 0\). Then \(g^{**}(y_ 0)= g(y_ 0)\). The author applies the above result to duality schemes by using perturbation functions and Lagrangeans. Then he calculates the support function for the intersection of ellipsoids, which yields a class of dual norms, and constructs dual problems to the problem of minimax estimation.
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duality
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nonconvex optimization
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duality schemes
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perturbation functions
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Lagrangeans
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minimax estimation
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