Efficient Scenario Generation for Heavy-Tailed Chance Constrained Optimization

Q1 Mathematics Stochastic Systems Pub Date : 2020-02-06 DOI:10.1287/stsy.2021.0021
J. Blanchet, Fan Zhang, B. Zwart
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Abstract

We consider a generic class of chance-constrained optimization problems with heavy-tailed (i.e., power-law type) risk factors. As the most popular generic method for solving chance constrained optimization, the scenario approach generates sampled optimization problem as a precise approximation with provable reliability, but the computational complexity becomes intractable when the risk tolerance parameter is small. To reduce the complexity, we sample the risk factors from a conditional distribution given that the risk factors are in an analytically tractable event that encompasses all the plausible events of constraints violation. Our approximation is proven to have optimal value within a constant factor to the optimal value of the original chance constraint problem with high probability, uniformly in the risk tolerance parameter. To the best of our knowledge, our result is the first uniform performance guarantee of this type. We additionally demonstrate the efficiency of our algorithm in the context of solvency in portfolio optimization and insurance networks. Funding: The research of B. Zwart is supported by the NWO (Dutch Research Council) [Grant 639.033.413]. The research of J. Blanchet is supported by the Air Force Office of Scientific Research [Award FA9550-20-1-0397], the National Science Foundation [Grants 1820942, 1838576, 1915967, and 2118199], Defense Advanced Research Projects Agency [Award N660011824028], and China Merchants Bank.
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重尾机会约束优化的高效场景生成
我们考虑一类具有重尾(即幂律型)风险因子的机会约束优化问题。作为求解机会约束优化问题最常用的通用方法,场景法生成的采样优化问题是一个精确的近似,具有可证明的可靠性,但当风险承受能力参数较小时,计算量变得难以处理。为了降低复杂性,我们从一个条件分布中采样风险因素,假设风险因素在一个分析可处理的事件中,该事件包含了违反约束的所有可能事件。证明了我们的逼近对原机会约束问题的高概率最优值有一个常数因子内的最优值,在风险容忍度参数上是一致的。据我们所知,我们的结果是这种类型的第一个统一的性能保证。我们还在投资组合优化和保险网络偿付能力的背景下证明了我们的算法的效率。资助:B. Zwart的研究得到了NWO(荷兰研究理事会)的支持[Grant 639.033.413]。J. Blanchet的研究得到了空军科研室[奖励FA9550-20-1-0397],国家科学基金[资助项目:1820942,1838576,1915967和2118199],国防高级研究计划局[资助项目:N660011824028]和招商银行的支持。
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来源期刊
Stochastic Systems
Stochastic Systems Decision Sciences-Statistics, Probability and Uncertainty
CiteScore
3.70
自引率
0.00%
发文量
18
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