E. Ruben van Beesten, Ward Romeijnders, Kees Jan Roodbergen
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引用次数: 0
Abstract
We consider two-stage risk-averse mixed-integer recourse models with law invariant coherent risk measures. As in the risk-neutral case, these models are generally non-convex as a result of the integer restrictions on the second-stage decision variables and hence, hard to solve. To overcome this issue, we propose a convex approximation approach. We derive a performance guarantee for this approximation in the form of an asymptotic error bound, which depends on the choice of risk measure. This error bound, which extends an existing error bound for the conditional value at risk, shows that our approximation method works particularly well if the distribution of the random parameters in the model is highly dispersed. For special cases we derive tighter, non-asymptotic error bounds. Whereas our error bounds are valid only for a continuously distributed second-stage right-hand side vector, practical optimization methods often require discrete distributions. In this context, we show that our error bounds provide statistical error bounds for the corresponding (discretized) sample average approximation (SAA) model. In addition, we construct a Benders’ decomposition algorithm that uses our convex approximations in an SAA-framework and we provide a performance guarantee for the resulting algorithm solution. Finally, we perform numerical experiments which show that for certain risk measures our approach works even better than our theoretical performance guarantees suggest.
我们考虑的是两阶段风险规避混合整数求助模型,该模型具有法律不变的相干风险度量。与风险中性模型一样,由于对第二阶段决策变量的整数限制,这些模型通常是非凸的,因此很难求解。为了克服这一问题,我们提出了一种凸近似方法。我们以渐近误差约束的形式推导出这种近似方法的性能保证,它取决于风险度量的选择。该误差约束扩展了现有的条件风险值误差约束,表明如果模型中随机参数的分布高度分散,我们的近似方法尤其有效。对于特殊情况,我们推导出了更严格的非渐近误差边界。虽然我们的误差边界只对连续分布的第二阶段右侧向量有效,但实际优化方法往往需要离散分布。在这种情况下,我们证明我们的误差边界为相应的(离散化)样本平均近似模型提供了统计误差边界。此外,我们还构建了一种本德尔分解算法,该算法在 SAA 框架中使用了我们的凸近似值,并为所得到的算法解决方案提供了性能保证。最后,我们进行了数值实验,结果表明,对于某些风险度量,我们的方法甚至比理论性能保证所暗示的效果更好。
期刊介绍:
Computational Optimization and Applications is a peer reviewed journal that is committed to timely publication of research and tutorial papers on the analysis and development of computational algorithms and modeling technology for optimization. Algorithms either for general classes of optimization problems or for more specific applied problems are of interest. Stochastic algorithms as well as deterministic algorithms will be considered. Papers that can provide both theoretical analysis, along with carefully designed computational experiments, are particularly welcome.
Topics of interest include, but are not limited to the following:
Large Scale Optimization,
Unconstrained Optimization,
Linear Programming,
Quadratic Programming Complementarity Problems, and Variational Inequalities,
Constrained Optimization,
Nondifferentiable Optimization,
Integer Programming,
Combinatorial Optimization,
Stochastic Optimization,
Multiobjective Optimization,
Network Optimization,
Complexity Theory,
Approximations and Error Analysis,
Parametric Programming and Sensitivity Analysis,
Parallel Computing, Distributed Computing, and Vector Processing,
Software, Benchmarks, Numerical Experimentation and Comparisons,
Modelling Languages and Systems for Optimization,
Automatic Differentiation,
Applications in Engineering, Finance, Optimal Control, Optimal Design, Operations Research,
Transportation, Economics, Communications, Manufacturing, and Management Science.