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Data-Driven Optimization of Reward-Risk Ratio Measures

机译:数据驱动的奖励风险率措施优化

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We investigate a class of fractional distributionally robust optimization problems with uncertain probabilities. They consist in the maximization of ambiguous fractional functions representing reward-risk ratios and have a semi-infinite programming epigraphic formulation. We derive a new fully parameterized closed-form to compute a new bound on the size of the Wasserstein ambiguity ball. We design a data-driven reformulation and solution framework. The reformulation phase involves the derivation of the support function of the ambiguity set and the concave conjugate of the ratio function. We design modular bisection algorithms which enjoy the finite convergence property. This class of problems has wide applicability in finance, and we specify new ambiguous portfolio optimization models for the Sharpe and Omega ratios. The computational study shows the applicability and scalability of the framework to solve quickly large, industry-relevant-size problems, which cannot be solved in one day with state-of-the-art mixed-integer nonlinear programming (MINLP) solvers.
机译:我们调查一类具有不确定概率的分数分布稳健的优化问题。它们包括代表奖励风险比的模糊分数函数的最大化,并具有半无限编程形代制剂。我们派生了一个新的完全参数化的封闭形式,以计算Wassersein模糊的球的大小的新界限。我们设计数据驱动的重构和解决方案框架。该重构阶段涉及衍生模棱两可集合的支撑函数和比率功能的凹形缀合物。我们设计模块化二分算法,享受有限趋同性。这类问题在金融上具有广泛的适用性,我们为Sharpe和Omega比率指定了新的模糊产品组合优化模型。计算研究显示了框架的适用性和可扩展性,以解决快速的大型行业相关的大小问题,这些问题不能在一天内解决,其中最先进的混合整数非线性编程(MINLP)求解器。

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