2021
DOI: 10.48550/arxiv.2105.11845
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An incremental descent method for multi-objective optimization

Abstract: Current state-of-the-art multi-objective optimization solvers, by computing gradients of all π‘š objective functions per iteration, produce after π‘˜ iterations a measure of proximity to critical conditions that is upperbounded by 𝑂 (1/ √ π‘˜) when the objective functions are assumed to have πΏβˆ’Lipschitz continuous gradients; i.e. they require 𝑂 (π‘š/πœ– 2 ) gradient and function computations to produce a measure of proximity to critical conditions bellow some target πœ–. We reduce this to 𝑂 (1/πœ– 2 ) with a meth… Show more

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