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Nonlinear Spectral Duality

Nonlinear eigenvalue problems for pairs of homogeneous convex functions are particular nonlinear constrained optimization problems that arise in a variety of settings, including graph mining, machine learning, and network science. By considering different notions of duality transforms from both classical and recent convex geometry theory, in this work we show that one can move from the primal to the dual nonlinear eigenvalue formulation maintaining the spectrum, the variational spectrum as well as the corresponding multiplicities unchanged. These nonlinear spectral duality properties can be used to transform the original optimization problem into various alternative and possibly more treatable dual problems. We illustrate the use of nonlinear spectral duality in a variety of example settings involving optimization problems on graphs, nonlinear Laplacians, and distances between convex bodies.

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Related contextCo-authorshipAuthorshipAuthorshipTopic signalTopic signalTopic signalTopic signalTopic signalWNonlinear Spectral Dualitypreprint / 2022AFrancesco TudiscoResearcherADong ZhangResearcherTmath.OC9232 worksTmath.NA6807 worksTNumerical Analysis6388 worksTmath.MG1407 worksTmath.SP1235 works
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Nonlinear Spectral Duality

preprint / 2022

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