LGOCOct 6, 2025

Stochastic Approximation Methods for Distortion Risk Measure Optimization

Peking U
arXiv:2510.04563v1h-index: 6
Originality Incremental advance
AI Analysis

This work addresses risk management in decision-making under uncertainty, offering scalable methods for finance and inventory control, but it is incremental as it builds on existing DRM frameworks with algorithmic enhancements.

The paper tackles the optimization of Distortion Risk Measures (DRMs) by proposing gradient descent algorithms based on dual representations, achieving convergence rates of O(k^{-4/7}) and O(k^{-2/3}) and demonstrating substantial improvements in robust portfolio selection and deep reinforcement learning applications.

Distortion Risk Measures (DRMs) capture risk preferences in decision-making and serve as general criteria for managing uncertainty. This paper proposes gradient descent algorithms for DRM optimization based on two dual representations: the Distortion-Measure (DM) form and Quantile-Function (QF) form. The DM-form employs a three-timescale algorithm to track quantiles, compute their gradients, and update decision variables, utilizing the Generalized Likelihood Ratio and kernel-based density estimation. The QF-form provides a simpler two-timescale approach that avoids the need for complex quantile gradient estimation. A hybrid form integrates both approaches, applying the DM-form for robust performance around distortion function jumps and the QF-form for efficiency in smooth regions. Proofs of strong convergence and convergence rates for the proposed algorithms are provided. In particular, the DM-form achieves an optimal rate of $O(k^{-4/7})$, while the QF-form attains a faster rate of $O(k^{-2/3})$. Numerical experiments confirm their effectiveness and demonstrate substantial improvements over baselines in robust portfolio selection tasks. The method's scalability is further illustrated through integration into deep reinforcement learning. Specifically, a DRM-based Proximal Policy Optimization algorithm is developed and applied to multi-echelon dynamic inventory management, showcasing its practical applicability.

Foundations

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