2021
DOI: 10.48550/arxiv.2102.13444
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Derivative-Free Multiobjective Trust Region Descent Method Using Radial Basis Function Surrogate Models

Manuel Berkemeier,
Sebastian Peitz

Abstract: We present a flexible trust region descend algorithm for unconstrained and convexly constrained multiobjective optimization problems. It is targeted at heterogeneous and expensive problems, i.e., problems that have at least one objective function that is computationally expensive. The method is derivative-free in the sense that neither need derivative information be available for the expensive objectives nor are gradients approximated using repeated function evaluations as is the case in finitedifference metho… Show more

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