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arXiv 提交日期: 2026-04-15
📄 Abstract - Multistage Conditional Compositional Optimization

We introduce Multistage Conditional Compositional Optimization (MCCO) as a new paradigm for decision-making under uncertainty that combines aspects of multistage stochastic programming and conditional stochastic optimization. MCCO minimizes a nest of conditional expectations and nonlinear cost functions. It has numerous applications and arises, for example, in optimal stopping, linear-quadratic regulator problems, distributionally robust contextual bandits, as well as in problems involving dynamic risk measures. The naïve nested sampling approach for MCCO suffers from the curse of dimensionality familiar from scenario tree-based multistage stochastic programming, that is, its scenario complexity grows exponentially with the number of nests. We develop new multilevel Monte Carlo techniques for MCCO whose scenario complexity grows only polynomially with the desired accuracy.

顶级标签: theory machine learning systems
详细标签: stochastic optimization multistage programming monte carlo methods decision making conditional expectations 或 搜索:

多阶段条件组合优化 / Multistage Conditional Compositional Optimization


1️⃣ 一句话总结

这篇论文提出了一种名为MCCO的新决策优化框架,用于处理不确定性下的多阶段决策问题,并通过创新的多级蒙特卡洛方法,将计算复杂度从指数级降低到多项式级,从而解决了传统方法因“维度灾难”而难以求解的难题。

源自 arXiv: 2604.14075