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A warm-start approach for large-scale stochastic linear programs

机译:大规模随机线性程序的热启动方法

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摘要

We describe a way of generating a warm-start point for interior point methods in the context of stochastic programming. Our approach exploits the structural information of the stochastic problem so that it can be seen as a structure-exploiting initial point generator. We solve a small-scale version of the problem corresponding to a reduced event tree and use the solution to generate an advanced starting point for the complete problem. The way we produce a reduced tree tries to capture the important information in the scenario space while keeping the dimension of the corresponding (reduced) deterministic equivalent small. We derive conditions which should be satisfied by the reduced tree to guarantee a successful warm-start of the complete problem. The implementation within the HOPDM and OOPS interior point solvers shows remarkable advantages.
机译:我们描述了一种在随机编程的情况下为内部点方法生成热启动点的方法。我们的方法利用了随机问题的结构信息,因此可以将其视为利用结构的初始点生成器。我们解决了与减少的事件树相对应的问题的小规模版本,并使用该解决方案生成了完整问题的高级起点。我们生成简化树的方法试图在场景空间中捕获重要信息,同时保持相应(简化)确定性等价物的维数较小。我们推导了简化树应满足的条件,以确保成功解决完整问题。在HOPDM和OOPS内部点求解器中的实现显示出显着的优势。

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