Primal-dual proximal algorithms for structured convex optimization: a unifying framework (Q2415201)
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| English | Primal-dual proximal algorithms for structured convex optimization: a unifying framework |
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Primal-dual proximal algorithms for structured convex optimization: a unifying framework (English)
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21 May 2019
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The authors introduce a novel primal-dual framework for solving structured convex optimization problems involving the sum of a Lipschitz-differentiable function and two nonsmooth functions, one of which composed with a linear continuous operator. The new framework is based on an asymmetric forward-backward-adjoint three-term splitting and it contains as special cases some known algorithms and some new primal-dual schemes. Linear convergence of the new method is achieved under four different regularity assumptions for the cost functions and for the class of problems with piecewise linear-quadratic cost functions. For the entire collection see [Zbl 1407.90006].
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convex optimization
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primal-dual algorithms
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operator splitting
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linear convergence
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