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Optimizing over coherent risk measures and non-convexities: a robust mixed integer optimization approach

机译:优化相干风险度量和非凸性:鲁棒的混合整数优化方法

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摘要

Recently, coherent risk measure minimization was formulated as robust optimization and the correspondence between coherent risk measures and uncertainty sets of robust optimization was investigated. We study minimizing coherent risk measures under a norm equality constraint with the use of robust optimization formulation. Not only existing coherent risk measures but also a new coherent risk measure is investigated by setting a new uncertainty set. The norm equality constraint itself has a practical meaning or plays a role to prevent a meaningless solution, the zero vector, in the context of portfolio optimization or binary classification in machine learning, respectively. For such advantages, the convexity is sacrificed in the formulation. However, we show a condition for an input of our problem which guarantees that the nonconvex constraint is convexified without changing the optimality of the problem. If the input does not satisfy the condition, we propose to solve a mixed integer optimization problem by using the or -norm. The numerical experiments show that our approach has good performance for portfolio optimization and binary classification and also imply its flexibility of modelling that makes it possible to deal with various coherent risk measures.
机译:最近,将相干风险度量最小化作为鲁棒优化,并研究了相干风险度量与鲁棒优化不确定性集之间的对应关系。我们研究使用稳健的优化公式在规范平等约束下最小化相关风险度量。通过设置新的不确定性集,不仅研究现有的一致风险度量,而且研究新的一致风险度量。范数相等约束本身具有实际意义,或者在防止机器学习中的组合优化或二进制分类的情况下,分别防止零向量无意义的解决方案。为了这些优点,在​​配方中牺牲了凸度。但是,我们给出了输入问题的条件,该条件保证了不凸约束不凸出而不会改变问题的最优性。如果输入不满足条件,我们建议通过使用-norm来解决混合整数优化问题。数值实验表明,我们的方法在投资组合优化和二元分类中具有良好的性能,并且还暗示了其建模的灵活性,这使得它有可能处理各种相关的风险度量。

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