A Fast Smoothing Procedure for Large-Scale Stochastic Programming

Martin Biel, Vien V. Mai, M. Johansson
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Abstract

We develop a fast smoothing procedure for solving linear two-stage stochastic programs, which outperforms the well-known L-shaped algorithm on large-scale benchmarks. We derive problem-dependent bounds for the effect of smoothing and characterize the convergence rate of the proposed algorithm. The theory suggests that the smoothing scheme can be sped up by sacrificing accuracy in the final solution. To obtain an efficient and effective method, we suggest a hybrid solution that combines the speed of the smoothing scheme with the accuracy of the L-shaped algorithm. We benchmark a parallel implementation of the smoothing scheme against an efficient parallelized L-shaped algorithm on three large-scale stochastic programs, in a distributed environment with 32 worker cores. The smoothing scheme reduces the solution time by up to an order of magnitude compared to L-shaped.
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大规模随机规划的快速平滑方法
我们开发了一种求解线性两阶段随机规划的快速平滑程序,在大规模基准测试中优于著名的l形算法。我们导出了平滑效果的问题依赖界,并描述了该算法的收敛速度。理论表明,可以通过牺牲最终解的精度来加快平滑方案的速度。为了获得一种高效的方法,我们提出了一种将平滑方案的速度与l形算法的精度相结合的混合解决方案。我们在具有32个工作核的分布式环境中,对平滑方案的并行实现与高效并行l形算法进行了基准测试。与l型相比,平滑方案可将求解时间减少一个数量级。
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