Stochastic compositional optimization (SCO) has attracted considerable attention because of its broad applicability to important real-world problems. However, existing works on SCO assume that the projection within a solution update is simple, which fails to hold for problem instances where the constraints are in the form of expectations, such as empirical conditional value-at-risk constraints. We study a novel model that incorporates single-level expected value and two-level compositional constraints into the current SCO framework. Our model can be applied widely to data-driven optimization and risk management, including risk-averse optimization and high-moment portfolio selection, and can handle multiple constraints. We further propose a class of primal-dual algorithms that generates sequences converging to the optimal solution at the rate of $\cO(\frac{1}{\sqrt{N}})$under both single-level expected value and two-level compositional constraints, where $N$ is the iteration counter, establishing the benchmarks in expected value constrained SCO.
翻译:托盘成份优化(SCO)因其广泛适用于重要的现实世界问题而吸引了相当多的关注。然而,上合组织的现有工作假设,解决方案更新中的预测很简单,无法解决问题,例如,经验性有条件的风险价值限制等制约形式。我们研究一种新颖的模式,将单级预期值和两级构成限制纳入上合组织当前的框架。我们的模型可以广泛应用于数据驱动的优化和风险管理,包括风险偏差优化和高移动组合选择,并能够处理多种制约因素。我们进一步建议了一类原始二元算法,以单级预期值和两级构成限制(即以美元作为顶点)的汇率生成序列与最佳解决方案相融合的顺序,在预期值受限的上合价中设定基准。