

{"id":140,"date":"2024-06-03T12:54:53","date_gmt":"2024-06-03T10:54:53","guid":{"rendered":"https:\/\/project.inria.fr\/moka10\/?page_id=140"},"modified":"2024-06-06T12:17:20","modified_gmt":"2024-06-06T10:17:20","slug":"talks","status":"publish","type":"page","link":"https:\/\/project.inria.fr\/moka10\/talks\/","title":{"rendered":"Talks"},"content":{"rendered":"<h5 class=\"wp-block-heading\"><strong>Mathieu Lewin<\/strong> &#8211; Sur le transport optimal pour des syst\u00e8mes de particules classiques et quantiques &#8211; <em>Long talk<\/em><\/h5>\n\n\n\n<p class=\"has-medium-font-size\"><em>Dans cet expos\u00e9 je rappellerai comment le transport optimal intervient en chimie et en physique quand on \u00e9tudie des syst\u00e8mes de particules en interaction. Je mentionnerai ensuite quelques r\u00e9sultats r\u00e9cents et questions ouvertes.<\/em><\/p>\n\n\n\n<h5 class=\"wp-block-heading\"><strong>Hugo Malamut<\/strong> &#8211; Well-posedness and convergence of entropic approximation of semi-geostrophic equations &#8211; <em>Short talk<\/em><\/h5>\n\n\n\n<p class=\"has-medium-font-size\"><em>The semi-geostrophic (SG) equations notably allow for modeling the evolution of wind fronts over large time and space scales. Optimal transport provides a simple and concise interpretation of these equations. It offers the opportunity to solve use Sinkhorn algorithm for numerical resolution. This methods corresponds to a PDE that approximates the SG system. I will present a result of well-posedness for this PDE and discuss the convergence of the scheme when both the regularization parameter and the discretization step vanish.<br>Based on joint works with J.-D. Benamou, C. Cotter (2023) and G. Carlier (2024)<\/em><\/p>\n\n\n\n<h5 class=\"wp-block-heading\"><strong>Jean-Baptiste Courbot<\/strong> &#8211; Off-the-grid, in the clouds, and beyond &#8211; <em>Short talk<\/em><\/h5>\n\n\n\n<p class=\"has-medium-font-size\"><em>In this talk we will cover some developments of the off-the-grid methodology for analyzing images based on sparse priors. Starting with an application on cloud tracking in remote sensing image, we will deepen the algorithm methodology introducing an homotopy framework, with applications in microscopy. Then, we will see how this framework can be tuned to the specificities of time-frequency analysis.<\/em><\/p>\n\n\n\n<h5 class=\"wp-block-heading\"><strong>Gabriel Peyr\u00e9<\/strong> &#8211; A Survey of Wasserstein Flow in Neural Network Training Analysis &#8211; Long talk<\/h5>\n\n\n\n<p class=\"has-medium-font-size\"><em>In this talk, I will first introduce the concept of Wasserstein gradient flow, an optimization process over the space of measures. This approach provides a unified framework for describing the gradient descent method applied to particle positions and can handle an arbitrary, possibly infinite, number of particles. Additionally, it enables the modeling of diffusion phenomena, which are not easily described by particle systems, and can be beneficial for sampling problems. A significant recent application of this method is in studying the convergence of gradient training in shallow neural networks, where particles represent neuron weights. I will conclude by discussing its application in deep learning, particularly in training ResNet architectures, where optimal transport is applied independently to each residual connection. This final part is based on joint work with Rapha\u00ebl Barboni and Fran\u00e7ois-Xavier Vialard.<\/em><\/p>\n\n\n\n<h5 class=\"wp-block-heading\"><strong>Adrien Vacher<\/strong> &#8211; Convergence and lower bounds for Geometric Tempering &#8211; <em>Short talk<\/em><\/h5>\n\n\n\n<p class=\"has-medium-font-size\"><em>In this talk, we establish convergence results for the geometric tempering scheme under standard functional inequalities. Even though our upper-bounds can slightly improve over Langevin&#8217;s in the strongly log-concave case, we establish lower-bounds showing that, just as Langevin, geometric tempering still fails to converge for multi-modal distributions.<\/em><\/p>\n\n\n\n<h5 class=\"wp-block-heading\"><strong>Flavien Leger<\/strong> &#8211; Spaces of measures with nonnegative cross-curvature &#8211; <em>Short talk<\/em><\/h5>\n\n\n\n<p class=\"has-medium-font-size\"><em>The MTW condition was introduced by Ma, Trudinger and Wang in their study of the regularity of the optimal transport problem with a general cost function. Nonnegative cross-curvature (NNCC) is a closely related condition later studied by Kim and McCann.<br>In this talk I will present a synthetic formulation of NNCC that is applicable to infinite-dimensional spaces of measures and non-differentiable costs. In that framework the Wasserstein space has NNCC, and more generally transportation costs induced by a ground cost with NNCC. Other interesting examples include unbalanced optimal transport, as well as the Gromov\u2013Wasserstein, Bures\u2013Wasserstein, Hellinger and Fisher\u2013Rao squared distances.<br>I will then discuss applications to optimization problems on spaces of measures. On NNCC spaces it is possible to formulate tractable conditions to prove evolution variational inequalities (EVIs) for proximal schemes involving a movement limiter that is not a squared distance.<\/em><\/p>\n\n\n\n<h5 class=\"wp-block-heading\"><strong>Ir\u00e8ne Waldspurger<\/strong> &#8211; Second-order optimization for ill-conditioned low-rank problems &#8211; <em>Short talk<\/em><\/h5>\n\n\n\n<p class=\"has-medium-font-size\"><em>When reconstructing a low-rank matrix from linear measurements, it is classical to write the matrix as the product of two &#8220;thin&#8221; matrices and optimize directly over the factors. This approach, called the Burer-Monteiro factorization, saves computational time and storage space, compared to optimizing over the full matrix.When the size of the factors is stricly larger than the rank of the underlying unknown matrix (the &#8220;overparametrized setting&#8221;), the factorization introduces ill-conditioning in the problem, making straightforward first-order methods slow. To overcome this issue, preconditioned gradient methods have been proposed. In this talk, we will discuss the performance of a second-order method, namely trust-regions.<br>This is joint work with Paul Caucheteux, Florentin Goyens and Cl\u00e9ment Royer.<\/em><\/p>\n\n\n\n<h5 class=\"wp-block-heading\"><strong>Romain Petit<\/strong> &#8211; Rel\u00e8vement de probl\u00e8mes inverses pour des \u00e9quations aux d\u00e9riv\u00e9es partielles &#8211; <em>Short talk<\/em><\/h5>\n\n\n\n<p class=\"has-medium-font-size\"><em>Dans cet expos\u00e9, je pr\u00e9senterai un travail en cours qui est une collaboration avec Giovanni S. Alberti et Simone Sanna (Universit\u00e0 di Genova). Celui-ci concerne des probl\u00e8mes inverses qui consistent \u00e0 retrouver l\u2019un des coefficients d\u2019une \u00e9quation aux d\u00e9riv\u00e9es partielles \u00e0 partir d\u2019informations sur sa solution. Le principal obstacle \u00e0 leur r\u00e9solution est leur non-lin\u00e9arit\u00e9 : l\u2019application liant l\u2019inconnue aux observations est fortement non-lin\u00e9aire. Je pr\u00e9senterai une id\u00e9e d\u2019approche qui pourrait permettre de r\u00e9soudre ces probl\u00e8mes inverses via la r\u00e9solution d\u2019un probl\u00e8me d\u2019optimisation convexe. Celle-ci s\u2019inspire fortement d\u2019approches par rel\u00e8vement (ou lifting) utilis\u00e9es pour la r\u00e9solution de probl\u00e8mes inverses quadratiques, tels que les probl\u00e8mes de reconstruction de phase.<\/em><\/p>\n\n\n\n<h5 class=\"wp-block-heading\"><strong>Claire Boyer<\/strong> &#8211; A primer on physics-informed machine learning &#8211; <em>Short talk<\/em><\/h5>\n\n\n\n<p><em>TBA<\/em><\/p>\n\n\n\n<h5 class=\"wp-block-heading\"><strong>Fran\u00e7ois-Xavier Vialard<\/strong> &#8211; On the global convergence of the Wasserstein gradient ow of Coulomb discrepancies <em> &#8211; Long talk<\/em><\/h5>\n\n\n\n<p class=\"has-medium-font-size\" style=\"font-style:italic;font-weight:400\">In this talk, we study the gradient flow with respect to the Wasserstein metric of the Maximum Mean Discrepancy associated with the Coulomb kernel. In this context, we present several sufficient conditions for global convergence of the gradient flow to the unique global minimum. For instance, on closed Riemannian manifolds, we prove that the so-called Polyak-Lojasiewicz condition holds in some cases, resulting in an exponential convergence. To obtain this result, we use standard estimates from potential theory. An other result is the fact that there is no local minimum apart from the global one. This result is proven using flow interchange techniques.<\/p>\n\n\n\n<h5 class=\"wp-block-heading\"><strong>Xavier Dupuis<\/strong> &#8211; Multidimensional screening &#8211; <em>Short talk<\/em><\/h5>\n\n\n\n<p class=\"has-medium-font-size\"><em>We consider multidimensional screening problems (or principal-agent problems) with the joint taxation of savings and labor incomes as a motivation.<br>We provide a saddle-point reformulation on which we can apply Chambolle-Pock primal-dual algorithm or its nonconvex extension by Valkonen.<br>This is a joint work with Guillaume Carlier, Jean-Charles Rochet, and John Thanassoulis.<\/em><\/p>\n\n\n\n<h5 class=\"wp-block-heading\"><strong>Guillaume Chazareix<\/strong> &#8211; Entropic Martingale Optimal Transport &#8211; <em>Short talk<\/em><\/h5>\n\n\n\n<p class=\"has-medium-font-size\" id=\"block-654a604c-3ac8-4d61-b543-38cf0fe2af80\"><em>Martingale Optimal Transport has found extensive applications in various financial contexts, particularly in the calibration of stochastic processes. In finance, we are interested in the prices of financial products and derivatives, which are themselves financial products whose price depends on the price of one or more other financial products. Their price is uncertain, but the distribution of these prices is modeled by a diffusion process, such as a constant coefficient diffusion in the case of the famous Black-Scholes model. The calibration problem corresponds to finding the parameters of such a model based on measurable market data: the price of a financial product at an initial time and the price of derivatives maturing at later times. The selected derivatives are generally common products, such as options. The considered models may have local volatility, thus dependent on time and space. This volatility can then be used to calculate the price of more complex derivatives. Numerical solutions to this problem involve solving a variational problem based on nonlinear partial differential equations. However, these approaches are limited by the complexity of numerically solving these equations. In our work, we propose a discretization approach for the continuous problem and show that the solution of the discrete multi-marginal entropic optimal martingale transport problem thus obtained converges to the solution for the choice of a particular cost function continuous-time martingale optimal transport problem. This relaxation allows the use of algorithms similar to those employed in classical entropic optimal transport. Furthermore, we describe a method for implementing this algorithm on a GPU platform, thus improving the speed of calculations. We present numerical results for examples of multi-marginal martingale transport in an abstract context, as well as for examples in the particular case of the calibration of local stochastic volatility models.<\/em><\/p>\n\n\n\n<h5 class=\"wp-block-heading\"><strong>Guillaume Carlier<\/strong> &#8211; Displacement smoothness of optimal entropic transport and applications &#8211; <em>Long talk<\/em><\/h5>\n\n\n\n<p class=\"has-medium-font-size\"><em>In this talk, &nbsp;I will discuss some stability properties of entropic potentials with respect to the marginals of the problem and give applications to some evolution equations or systems. Joint work with L\u00e9na\u00efc Chizat and Maxime Laborde.&nbsp;<\/em><\/p>\n\n\n\n<h5 class=\"wp-block-heading\"><strong>Quentin M\u00e9rigot<\/strong> &#8211; Quantization optimal pour Wasserstein et Sliced-Wasserstein &#8211; <em>Short talk<\/em><\/h5>\n\n\n\n<p>Cet expos\u00e9 porte probl\u00e8me de quantization (uniforme) optimale, qui consiste \u00e0 minimiser une distance entre une mesure de probabilit\u00e9s uniforme sur N atomes (en fonction de la position des atomes) et une densit\u00e9 de probabilit\u00e9 rho. Je ferais un panorama de ce qui est connu, principalement dans le cas o\u00f9 la distance est Wasserstein (p=2), et je pr\u00e9senterai des r\u00e9sultats pr\u00e9liminaires et des questions ouvertes dans le cas sliced-Wassertein.<\/p>\n\n\n\n<h5 class=\"wp-block-heading\"><strong>Maxime Sylvestre<\/strong> &#8211; Computing weak optimal transport &#8211; <em>Short talk<\/em><\/h5>\n\n\n\n<p class=\"has-medium-font-size\"><em>The weak optimal transport introduced is an extension of optimal transport which takes the following form<br>inf{\u03c0\u2208\u03a0(\u03bc,\u03bd)}    \u222bcx(\u03c0x)d\u03bc<br>where \u03c0 = \u03bc \u2297 \u03c0x and cx is a function defined over the probability measures. This formulation includes the entropic optimal transport and has multiple applications such as the martingale optimal transport, vector quantile regression. Duality attainment results have been obtained in the non entropic case. We will show that dual attainment holds for costs of the form cx(p) = c0x(p) + 1{\u222b f (y)dp(y)=0} + \u03b5H(p | \u03bd) where c0x is a Lipschitz (uniformly in x) for TV norm convex function, f is a vector valued function and \u03b5 \u2265 0. Moreover we derive regularity (at least L\u221e) for the dual potentials. Which in turns grant quantitative stability result in the marginal and in \u03b5 by using a modified version of the block approximation. Finally the convergence of the numerical scheme is proven and applications such as the Brenier-Strassen interpolation are computed.<\/em><\/p>\n\n\n\n<h5 class=\"wp-block-heading\"><strong>Thomas Gallou\u00ebt<\/strong> &#8211; Pourquoi quitter Mokaplan pour ParMA et ou ira Luca Nenna apr\u00e8s ? &#8211; <em>Short talk<\/em><\/h5>\n\n\n\n<p>Dans cette expos\u00e9 on expliquera la cr\u00e9ation de ParMA, ses sujets de recherche\u00a0 et pourquoi cette \u00e9quipe est \u00e9videment l\u2019avenir de Mokaplan. On essayera ensuite de deviner ou Luca sera les prochaines ann\u00e9es en discutant la notion d\u2019extrapolation dans l\u2019espace de Monge-Kantorovich.<\/p>","protected":false},"excerpt":{"rendered":"<p>Mathieu Lewin &#8211; Sur le transport optimal pour des syst\u00e8mes de particules classiques et quantiques &#8211; Long talk Dans cet expos\u00e9 je rappellerai comment le transport optimal intervient en chimie et en physique quand on \u00e9tudie des syst\u00e8mes de particules en interaction. Je mentionnerai ensuite quelques r\u00e9sultats r\u00e9cents et questions\u2026<\/p>\n<p> <a class=\"continue-reading-link\" href=\"https:\/\/project.inria.fr\/moka10\/talks\/\"><span>Continue reading<\/span><i class=\"crycon-right-dir\"><\/i><\/a> <\/p>\n","protected":false},"author":2470,"featured_media":0,"parent":0,"menu_order":0,"comment_status":"closed","ping_status":"closed","template":"","meta":{"footnotes":""},"class_list":["post-140","page","type-page","status-publish","hentry"],"_links":{"self":[{"href":"https:\/\/project.inria.fr\/moka10\/wp-json\/wp\/v2\/pages\/140","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/project.inria.fr\/moka10\/wp-json\/wp\/v2\/pages"}],"about":[{"href":"https:\/\/project.inria.fr\/moka10\/wp-json\/wp\/v2\/types\/page"}],"author":[{"embeddable":true,"href":"https:\/\/project.inria.fr\/moka10\/wp-json\/wp\/v2\/users\/2470"}],"replies":[{"embeddable":true,"href":"https:\/\/project.inria.fr\/moka10\/wp-json\/wp\/v2\/comments?post=140"}],"version-history":[{"count":37,"href":"https:\/\/project.inria.fr\/moka10\/wp-json\/wp\/v2\/pages\/140\/revisions"}],"predecessor-version":[{"id":202,"href":"https:\/\/project.inria.fr\/moka10\/wp-json\/wp\/v2\/pages\/140\/revisions\/202"}],"wp:attachment":[{"href":"https:\/\/project.inria.fr\/moka10\/wp-json\/wp\/v2\/media?parent=140"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}