Fast empirical scenarios

Michael Multerer , Paul Schneider , Rohan Sen
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引用次数: 0

Abstract

We seek to extract a small number of representative scenarios from large panel data that are consistent with sample moments. Among two novel algorithms, the first identifies scenarios that have not been observed before, and comes with a scenario-based representation of covariance matrices. The second proposal selects important data points from states of the world that have already realized, and are consistent with higher-order sample moment information. Both algorithms are efficient to compute and lend themselves to consistent scenario-based modeling and multi-dimensional numerical integration that can be used for interpretable decision-making under uncertainty. Extensive numerical benchmarking studies and an application in portfolio optimization favor the proposed algorithms.

快速经验方案
我们试图从大型面板数据中提取少量与样本矩一致的代表性情景。在两种新颖的算法中,第一种算法能识别以前未观察到的情景,并提供基于情景的协方差矩阵表示。第二种建议是从已经实现的世界状态中选择重要数据点,并与高阶样本矩信息保持一致。这两种算法的计算效率都很高,并适合于基于情景的一致建模和多维数值积分,可用于不确定情况下的可解释决策。广泛的数值基准研究和在投资组合优化中的应用都有利于所提出的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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