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A four-decomposition strategies for hierarchically modeling combinatorial optimization problems: framework, conditions and relations

机译:组合建模组合优化问题的四种分解策略:框架,条件和关系

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We address the problem of modeling combinatorial optimization problems (COP). COPs are generally complex problems to solve. So a good modeling step is fundamental to make the solution easier. Our approach orients researches to choose the best modeling strategy from the beginning to avoid any problem in the solving process. This paper aims at proposing a new approach dealing with hard COPs particularly when the decomposition process leads to some well-known and canonical optimization sub-problems. We tried to draw a clear framework that will help to model hierarchical optimization problems. The framework will be composed by four decomposition strategies which are: objective based decomposition; constraints based decomposition, semantic decomposition and data partitioning strategy. For each strategy, we present supporting examples from the literature where it was applied. But, not all combinatorial problems can be benefit from the outcomes and benefits of modeling problems hierarchically, rather only particular problems can be modeled like a hierarchical optimization problem. Thus, we propose a set of decomposability conditions for decomposing COPs. Furthermore, we define the types of relationships between obtained sub-problems and how partial solutions can be merged to obtain the final solution.
机译:我们解决了建模组合优化问题(COP)的问题。警察通常是解决的复杂问题。因此,良好的建模步骤是使解决方案更容易的基础。我们的方法对从一开始就选择最佳建模策略以避免解决过程中的任何问题。本文旨在提出尤其是当分解过程导致一些众所周知的和规范优化子问题时,提出一种处理硬警察的新方法。我们试图绘制一个明确的框架,有助于模拟分层优化问题。该框架将由四个分解策略组成,这些策略是:基于目标的分解;基于约束的分解,语义分解和数据分区策略。对于每个策略,我们呈现来自应用的文献的支持示例。但是,并非所有组合问题都可以从层次地建模问题的结果中受益,而是只有特定问题可以像分层优化问题一样建模。因此,我们提出了一系列用于分解警察的可分解性条件。此外,我们定义了所获得的子问题与部分解决方案之间的关系类型,以获得最终解决方案。

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