Decomposition-Coordination method for the management of a chain of dams
Authors: J-C. Alais, P. Carpentier, V.Leclère
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Authors: J-C. Alais, P. Carpentier, V.Leclère
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Authors: M. Grasselli, V.Leclère, M. Ludkovski
Published in International Journal of Theoretical and Applied Finance, 2013
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Authors: P. Carpentier, J-Ph. Chancelier, M. De Lara, V.Leclère
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Authors: P. Girardeau, V.Leclère, A. Philpott
Published in Mathematics of Operations Research, 2015
Asymptotic convergence of SDDP algorithms in the non-linear convex case.
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Authors: M. De Lara, V. Leclère
Published in European Journal of Operational Research, 2016
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Authors: V. Leclère, E. Grave, L. El Ghaoui
A new derivation of the one-class SVMs paradigms.
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Authors: E. Ndiaye, O. Fercoq, A. Gramfort, V. Leclère, J. Salmon
Published in Journal of Physics: Conference Series, 2017
Safe screen rules for square-root lasso
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Authors: H. Gérard, V.Leclère, A. Philpott
Published in Operations Research Letters, 2018
Showcasing multiple equilibria due to risk-aversion
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Authors: E. De Saint Germain, F. Meunier, V. Leclère
A model balancing costs, stocks and flexibility in the supply chain.
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Authors: P. Carpentier, J-Ph. Chancelier, F. Pacaud, V.Leclère
Published in European Journal of Operational Research, 2018
Application of DADP and other decomposition methods to large-scale hydro problem
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Authors: V. Leclère
Published in Operations Research Letters, 2019
Epiconvergence of approximated problems appearing in DADP
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Authors: V. Leclère, P. Carpentier, J-Ph. Chancelier, F. Pacaud
Published in SIAM journal on Optimization, 2020
Theory and convergence of dual SDDP
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Authors: A. Parmentier, V. Cohen, V. Leclère, J. Salmon, G. Obozinski
Published in INFORMS Journal on Optimization, 2020
Mathematical Programming methods for stochastic problems with structured information
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Authors: M. Forcier, V. Leclère
Published in Operation Research Letters, 2022
Generalized adaptive partition-based method for two-stage stochastic linear programs: Geometric oracle and analysis
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Authors: J. Bleyer, V. Leclère
Published in Direct Methods for Limit State of Materials and Structures,, 2023
This work proposes a novel theoretical framework of robust limit analysis i.e. the computation of limit loads of structures in presence of uncertainties using limit analysis and robust optimization theories.
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Authors: B. Da Costa, V. Leclère
Published in Operation Research Letters, 2023
We apply a dual SDDP approach to risk averse problem.
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Authors: Z. Fornier, D. Grosso, V. Leclère
Published in , 2023
Joint Production and Energy Supply Planning of an Industrial Microgrid
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Authors: B.F.P da Costa, V. Leclère
Duality of upper bounds in stochastic dynamic programming
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Authors: M. Forcier, S. Gaubert, V. Leclère
Published in SIAM journal on Optimization, 2023
We show that MLSP with arbitrary cost are equivalent to MLSP with discrete cost and give a geometrical insight to the discretization procedure. Best student paper at ECSO-CMS 2022.
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Authors: M. Forcier, V. Leclère
Published in Journal of Convex Analysis, 2023
Convergence of Trajectory Following Dynamic Programming algorithms for multistage stochastic problems without finite support assumptions
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Authors: Z. Fornier, D. Grosso, P. Pinson
Published in Energy Systems, 2024
Joint production and energy supply planning of an industrial microgrid
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Authors: Z. Fornier, V. Leclère, P. Pinson
Fairness by design in shared-energy allocation problems
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Authors: B. Da Costa, V. Leclère
Policy with guaranteed risk-adjusted performance for multistage stochastic linear problems
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Authors: A. Philpott, V. Leclère
Strategic behavior of risk-averse agents under stochastic market clearing
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SAFE elimination of variables. slides
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Tutorial on decomposition methods for optimization under uncertainty. slides
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Tutorial on decompositions methods for optimization under uncertainty. slides
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Tutorial on Stochastic Programming and Dynamic Programming methods for optimization under uncertainty. slides
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Showcasing multiple equilibria in a competitive market with risk averse players. slides paper
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Presentation of the dual SDDP algorithm yielding exact upper bounds. slides paper
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Presentation of the dual SDDP algorithm yielding exact upper bounds. slides paper
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Presentation of the dual SDDP algorithm yielding exact upper bounds. slides paper
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In this talk we explain how to obtain local and uniform exact discretization of linear stochastic problems. slides
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In this talk we give a framework for Trajectory Following Dynamic Programming algorithms and provide convergence result that does not require a finitely supported noise assumption slides preprint
Graduate course, IPP, M2, 2022
This is a master level course about stochastic optimization that take place at ENSTA-Paris, room 1226. See here for access information. You will need an identification document to get in the school.
Undergraduate course, Ecole des Ponts, 2A, 2022
This is a 4th year course about continuous (mainly convex) optimization.
Undergraduate course, Ecole des Ponts, 1A, 2022
This is a 3rd year course about the use of Operation Research in Transport problem. The subject being incredibly vast we actually focus on traffic assignement problem : knowing where people want to go, how is everybody going to choose its path, the traffic equilibrate and finally how much traffic jam are we going to observe.
Graduate course, MPRO, M2, 2023
This is a master level course about optimization under uncertainty, that take place at CNAM, (various room). See here for access information (“Matières” then “MPRO”).
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We present the basis of modeling under uncertainty, value and price of information, and sample average approximation. slides
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In this long tutorial we cover various decompositions techniques for stochastic optimization:
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In this tutorial we cover basic elements on Robust Optimization:
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We present the basis of stochastic and dynamic programming and ends with example comparing both approaches and limits. slides
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We present the Stochastic Dual Dynamic Programming algorithm and some of his brethren. slides