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hal.structure.identifierInstitut de Mathématiques de Bordeaux [IMB]
dc.contributor.authorBERCU, Bernard
hal.structure.identifierInstitut de Mathématiques de Bordeaux [IMB]
dc.contributor.authorBIGOT, Jérémie
hal.structure.identifierToulouse School of Economics [TSE-R]
dc.contributor.authorGADAT, Sébastien
hal.structure.identifierInstitut Polytechnique de Paris [IP Paris]
hal.structure.identifierDépartement Images, Données, Signal [IDS]
hal.structure.identifierSignal, Statistique et Apprentissage [S2A]
dc.contributor.authorSIVIERO, Emilia
dc.date.accessioned2024-04-04T02:40:20Z
dc.date.available2024-04-04T02:40:20Z
dc.date.issued2022-05-19
dc.identifier.issn2049-8772
dc.identifier.urihttps://oskar-bordeaux.fr/handle/20.500.12278/191055
dc.description.abstractEnWe introduce a new second order stochastic algorithm to estimate the entropically regularized optimal transport cost between two probability measures. The source measure can be arbitrary chosen, either absolutely continuous or discrete, while the target measure is assumed to be discrete. To solve the semi-dual formulation of such a regularized and semi-discrete optimal transportation problem, we propose to consider a stochastic Gauss-Newton algorithm that uses a sequence of data sampled from the source measure. This algorithm is shown to be adaptive to the geometry of the underlying convex optimization problem with no important hyperparameter to be accurately tuned. We establish the almost sure convergence and the asymptotic normality of various estimators of interest that are constructed from this stochastic Gauss-Newton algorithm. We also analyze their non-asymptotic rates of convergence for the expected quadratic risk in the absence of strong convexity of the underlying objective function. The results of numerical experiments from simulated data are also reported to illustrate the nite sample properties of this Gauss-Newton algorithm for stochasticregularized optimal transport, and to show its advantages over the use of the stochastic gradient descent, stochastic Newton and ADAM algorithms.
dc.description.sponsorshipMathématiques de l'optimisation déterministe et stochastique liées à l'apprentissage profond - ANR-19-CE23-0017
dc.language.isoen
dc.subject.enStochastic optimization
dc.subject.enStochastic Gauss-Newton algorithm
dc.subject.enOptimal transport
dc.subject.enEntropic regularization
dc.subject.enConvergence of random variables.
dc.title.enA stochastic Gauss-Newton algorithm for regularized semi-discrete optimal transport
dc.typeArticle de revue
dc.identifier.doi10.1093/imaiai/iaac014
dc.subject.halSciences de l'Homme et Société/Economies et finances
bordeaux.journalInformation and Inference: A Journal of the IMA
bordeaux.page1-56
bordeaux.hal.laboratoriesInstitut de Mathématiques de Bordeaux (IMB) - UMR 5251*
bordeaux.institutionUniversité de Bordeaux
bordeaux.institutionBordeaux INP
bordeaux.institutionCNRS
bordeaux.peerReviewedoui
hal.identifierhal-03794948
hal.version1
hal.popularnon
hal.audienceNationale
hal.origin.linkhttps://hal.archives-ouvertes.fr//hal-03794948v1
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