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作者机构:University Duisburg-Essen Thea Leymann-Straße 9 EssenD-45127 Germany
出 版 物:《arXiv》 (arXiv)
年 卷 期:2018年
核心收录:
摘 要:This paper generalizes results concerning strong convexity of two-stage mean-risk models with linear recourse to distortion risk measures. Introducing the concept of (restricted) partial strong convexity, we conduct an in-depth analysis of the expected excess functional with respect to the decision variable and the threshold parameter. These results allow to derive sufficient conditions for strong convexity of models building on the conditional value-at-risk due to its variational representation. Via Kusuoka representation these carry over to comonotonic and distortion risk measures, where we obtain verifiable conditions in terms of the distortion function. For stochastic optimisation models, we point out implications for quantitative stability with respect to perturbations of the underlying probability measure. Recent work in [3] and [29] also gives testimony to the importance of strong convexity for the convergence rates of modern stochastic subgradient descent algorithms and in the setting of machine *** Codes 90C15, 90C31 Copyright © 2018, The Authors. All rights reserved.