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Ergodic, primal convergence in dual subgradient schemes for convex programming

机译:凸规划的双重次梯度方案的遍历,原始收敛

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Lagrangean dualization and subgradient optimization techniques are frequently used within the field of computational optimization for finding approximate solutions to large, structured optimization problems. The dual subgradient scheme does not automatically produce primal feasible solutions; there is an abundance of techniques for computing such solutions (via penalty functions, tangential approximation schemes, or the solution of auxiliary primal programs), all of which require a fair amount of computational effort. We consider a subgradient optimization scheme applied to a Lagrangean dual formulation of a convex program, and construct, at minor cost, an ergodic sequence of subproblem solutions which converges to the primal solution set. Numerical experiments performed on a traffic equilibrium assignment problem under road pricing show that the computation of the ergodic sequence results in a considerable improvement in the quality of the primal solutions obtained, compared to those generated in the basic subgradient scheme. [References: 64]
机译:拉格朗日对偶化和次梯度优化技术经常在计算优化领域内使用,以找到针对大型结构优化问题的近似解。对偶次梯度方案不会自动产生原始可行解;有大量的技术可以计算这样的解(通过罚函数,切向近似方案或辅助原始程序的解),所有这些都需要大量的计算工作。我们考虑将次梯度优化方案应用于凸程序的Lagrangean对偶公式,并以较小的成本构建遍历序列的子问题解,该子问题解收敛到原始解集。在道路定价下对交通平衡分配问题进行的数值实验表明,与基本次梯度方案中生成的原始解相比,遍历序列的计算可显着提高所获得原始解的质量。 [参考:64]

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