Entropic proximal decomposition methods for convex programs and variational inequalities |
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Authors: | Alfred Auslender Marc Teboulle |
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Affiliation: | (1) Laboratoire d’ Econometrie de L’Ecole Polytechnique, Rue Descartes, Paris 75005, France, e-mail: auslen@poly.polytechnique.fr, FR;(2) School of Mathematical Sciences, Tel-Aviv University, Ramat-Aviv 69978, Israel, e-mail: teboulle@math.tau.ac.il, IL |
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Abstract: | We consider convex optimization and variational inequality problems with a given separable structure. We propose a new decomposition method for these problems which combines the recent logarithmic-quadratic proximal theory introduced by the authors with a decomposition method given by Chen-Teboulle for convex problems with particular structure. The resulting method allows to produce for the first time provably convergent decomposition schemes based on C ∞ Lagrangians for solving convex structured problems. Under the only assumption that the primal-dual problems have nonempty solution sets, global convergence of the primal-dual sequences produced by the algorithm is established. Received: October 6, 1999 / Accepted: February 2001?Published online September 17, 2001 |
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Keywords: | : convex optimization – decomposition methods – variational inequalities – entropic/interior proximal methods – Lagrangian multiplier methods |
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