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    Robust Solutions to Uncertain Multiobjective Programs

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    Decision making in the presence of uncertainty and multiple conļ¬‚icting objec-tives is a real-life issue, especially in the ļ¬elds of engineering, public policy making, business management, and many others. The conļ¬‚icting goals may originate from the variety of ways to assess a systemā€™s performance such as cost, safety, and aļ¬€ordability, while uncertainty may result from inaccurate or unknown data, limited knowledge, or future changes in the environment. To address optimization problems that incor-porate these two aspects, we focus on the integration of robust and multiobjective optimization. Although the uncertainty may present itself in many diļ¬€erent ways due to a diversity of sources, we address the situation of objective-wise uncertainty only in the coeļ¬ƒcients of the objective functions, which is drawn from a ļ¬nite set of scenarios. Among the numerous concepts of robust solutions that have been proposed and de-veloped, we concentrate on a strict concept referred to as highly robust eļ¬ƒciency in which a feasible solution is highly robust eļ¬ƒcient provided that it is eļ¬ƒcient with respect to every realization of the uncertain data. The main focus of our study is uncertain multiobjective linear programs (UMOLPs), however, nonlinear problems are discussed as well. In the course of our study, we develop properties of the highly robust eļ¬ƒcient set, provide its characterization using the cone of improving directions associated with the UMOLP, derive several bound sets on the highly robust eļ¬ƒcient set, and present a robust counterpart for a class of UMOLPs. As various results rely on the polar and strict polar of the cone of improving directions, as well as the acuteness of this cone, we derive properties and closed-form representations of the (strict) polar and also propose methods to verify the property of acuteness. Moreover, we undertake the computation of highly robust eļ¬ƒcient solutions. We provide methods for checking whether or not the highly robust eļ¬ƒcient set is empty, computing highly robust eļ¬ƒcient points, and determining whether a given solution of interest is highly robust eļ¬ƒcient. An application in the area of bank management is included
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