Expected Shortfall (ES), also known as superquantile or Conditional Value-at-Risk, has been recognized as an important measure in risk analysis and stochastic optimization, and is also finding applications beyond these areas. In finance, it refers to the conditional expected return of an asset given that the return is below some quantile of its distribution. In this paper, we consider a recently proposed joint regression framework that simultaneously models the quantile and the ES of a response variable given a set of covariates, for which the state-of-the-art approach is based on minimizing a joint loss function that is non-differentiable and non-convex. This inevitably raises numerical challenges and limits its applicability for analyzing large-scale data. Motivated by the idea of using Neyman-orthogonal scores to reduce sensitivity with respect to nuisance parameters, we propose a statistically robust (to highly skewed and heavy-tailed data) and computationally efficient two-step procedure for fitting joint quantile and ES regression models. With increasing covariate dimensions, we establish explicit non-asymptotic bounds on estimation and Gaussian approximation errors, which lay the foundation for statistical inference. Finally, we demonstrate through numerical experiments and two data applications that our approach well balances robustness, statistical, and numerical efficiencies for expected shortfall regression.
翻译:预测不足(ES)也被称为超量化或有条件值风险,被认为是风险分析和随机优化的一项重要措施,并且正在寻找这些领域以外的应用。在金融方面,它指的是资产的有条件预期回报,因为其回报低于其分布的某些四分位数。在本文件中,我们考虑最近提出的一个联合回归框架,这一框架同时建模一个响应变量的量和ES,同时建模一组共变数,对此,最先进的方法的基础是最大限度地减少联合损失功能,这种功能是不可区分的、非相容的。这不可避免地增加了数字挑战,限制了其对大规模数据分析的可适用性。由于使用内曼值和体积积分来降低对破坏参数的敏感度的想法,我们建议一个具有统计性强的(对高度扭曲和严重细化的数据)和计算高效的两步程序,以适应联合量化和ES回归模型。随着共变数的层面增加,我们建立了清晰的互换性、不精确的统计精确性、精确性、量化的预测性数据基础,我们最终在统计上展示了两套统计上的数据缩性数据。