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首页> 外文期刊>SIAM Journal on Optimization: A Publication of the Society for Industrial and Applied Mathematics >Self-concordance and decomposition-based interior point methods for the two-stage stochastic convex optimization problem
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Self-concordance and decomposition-based interior point methods for the two-stage stochastic convex optimization problem

机译:两阶段随机凸优化问题的基于自协调和分解的内点法

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摘要

We study the two-stage stochastic convex optimization problem whose first- and second-stage feasible regions admit a self-concordant barrier. We show that the barrier recourse functions and the composite barrier functions for this problem form self-concordant families. These results are used to develop prototype primal interior point decomposition algorithms that are more suitable for a heterogeneous distributed computing environment. We show that the worst case iteration complexity of the proposed algorithms is the same as that for the short- and long-step primal interior algorithms applied to the extensive formulation of this problem. The generality of our results allows the possibility of using barriers other than the standard log-barrier in an algorithmic framework.
机译:我们研究了两阶段随机凸优化问题,该问题的第一阶段和第二阶段可行区域都具有自协调障碍。我们表明,该问题的障碍追索功能和复合障碍功能形成了自调和族。这些结果用于开发更适合于异构分布式计算环境的原型原始内部点分解算法。我们表明,所提出算法的最坏情况下的迭代复杂度与应用于该问题的广泛表述的短步和长步原始内部算法的迭代复杂度相同。我们结果的一般性允许在算法框架中使用除标准对数屏障以外的其他屏障。

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