Quasi-Newton’s method for multiobjective optimization

Quasi-Newton’s method for multiobjective optimization

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Article ID: iaor20141441
Volume: 255
Issue: 12
Start Page Number: 765
End Page Number: 777
Publication Date: Jan 2014
Journal: Journal of Computational and Applied Mathematics
Authors:
Keywords: programming: multiple criteria, programming: convex, matrices
Abstract:

In this paper we present a quasi‐Newton’s method for unconstrained multiobjective optimization of strongly convex objective functions. Hence, we can approximate the Hessian matrices by using the well known BFGS method. The approximation of the Hessian matrices is usually faster than their exact evaluation, as used in, e.g., recently proposed Newton’s method for multiobjective optimization. We propose and analyze a new algorithm and prove that its convergence is superlinear.

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