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Fenchel-Lagrange Duality Versus Geometric Duality in Convex Optimization

机译:凸优化中的Fenchel-Lagrange对偶与几何对偶

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摘要

We present a new duality theory to treat convex optimization problems and we prove that the geometric duality used by Scott and Jefferson in different papers during the last quarter of century is a special case of it. Moreover, weaker sufficient conditions to achieve strong duality are considered and optimality conditions are derived. Next, we apply our approach to some problems considered by Scott and Jefferson, determining their duals. We give weaker sufficient conditions to achieve strong duality and the corresponding optimality conditions. Finally, posynomial geometric programming is viewed also as a particular case of the duality approach that we present.
机译:我们提出了一种新的对偶理论来处理凸优化问题,并证明了斯科特和杰斐逊在上个世纪后半叶在不同论文中使用的几何对偶就是其中的特例。此外,考虑了实现强对偶性的较弱的充分条件,并推导了最佳条件。接下来,我们将我们的方法应用于斯科特和杰斐逊考虑的一些问题,确定它们的对偶。我们给出了较弱的充分条件,以实现强对偶性和相应的最优性条件。最后,多项式几何规划也被视为我们提出的对偶方法的一种特殊情况。

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