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Robust Optimal Portfolio in a Mixture Setting with Partial Ambiguity
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Robust Optimal Portfolio in a Mixture Setting with Partial Ambiguity

N. D Shyamalkumar and Tianrun Wang
ArXiv.org
Cornell University
03/01/2026
DOI: 10.48550/arxiv.2603.00851
url
https://doi.org/10.48550/arxiv.2603.00851View
Preprint (Author's original)This preprint has not been evaluated by subject experts through peer review. Preprints may undergo extensive changes and/or become peer-reviewed journal articles. Open Access

Abstract

Managing insurance and financial risk when data is limited is a key task in the insurance industry. In this paper, we focus on cases where the risk distribution is modeled as a mixture with some components estimable to high precision or known, and others, along with their weights, are not. Our paper addresses two robust portfolio optimization problems with partial ambiguity, where the loss function involves either variance or conditional value-at-risk (CVaR). We use a projected subgradient descent algorithm to solve the optimization problems. The problem reduces to a convex-nonconcave minimax problem. We show that, while the general problem converges at anO(1/√k̅)rate, wherekdenotes the number of iterations, exponential convergence is possible in some cases. Lastly, we provide numerical examples to show the effectiveness of our approach and the attainment of a geometric convergence rate. This work aims to provide more effective solutions for actuarial decision-making under model uncertainty.
Mathematics - Optimization and Control

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