This paper studies how to train machine-learning models that directly approximate the optimal solutions of constrained optimization problems. This is an empirical risk minimization under constraints, which is challenging as training must balance optimality and feasibility conditions. Supervised learning methods often approach this challenge by training the model on a large collection of pre-solved instances. This paper takes a different route and proposes the idea of Primal-Dual Learning (PDL), a self-supervised training method that does not require a set of pre-solved instances or an optimization solver for training and inference. Instead, PDL mimics the trajectory of an Augmented Lagrangian Method (ALM) and jointly trains primal and dual ...
We define a primal-dual algorithm model (SOLA) for inequality constrained optimization problems that...
Optimization methods are at the core of many problems in signal/image processing, computer vision, a...
International audienceOptimization methods are at the core of many problems in signal/image processi...
Nonlinearly constrained optimization problems may be solved by minimizing a sequence of simpler subp...
In this work, new developments in primal-dual techniques for general constrained non-linear programm...
Nonlinearly constrained optimization problems can be solved by minimizing a sequence of simpler unco...
We consider large-scale Markov decision processes with an unknown cost function and address the prob...
The augmented Lagrangian method (ALM) is a classical optimization tool that solves a given “difficul...
This dissertation considers general time-varying optimization problems that arise in many network co...
International audienceWe propose a new primal-dual algorithm for solving nonlinearly constrai- ned m...
none6siThis paper explores the potential of Lagrangian duality for learning applications that featur...
none2This paper discusses a new method to perform propagation over a (two-layer, feed-forward) Neura...
We present a primal-dual algorithmic framework to obtain approximate solutions to a prototypical con...
Cette thèse s’inscrit dans le cadre de la conception, l’analyse et la mise en œuvre d’algorithmes ef...
Reinforcement learning is widely used in applications where one needs to perform sequential decision...
We define a primal-dual algorithm model (SOLA) for inequality constrained optimization problems that...
Optimization methods are at the core of many problems in signal/image processing, computer vision, a...
International audienceOptimization methods are at the core of many problems in signal/image processi...
Nonlinearly constrained optimization problems may be solved by minimizing a sequence of simpler subp...
In this work, new developments in primal-dual techniques for general constrained non-linear programm...
Nonlinearly constrained optimization problems can be solved by minimizing a sequence of simpler unco...
We consider large-scale Markov decision processes with an unknown cost function and address the prob...
The augmented Lagrangian method (ALM) is a classical optimization tool that solves a given “difficul...
This dissertation considers general time-varying optimization problems that arise in many network co...
International audienceWe propose a new primal-dual algorithm for solving nonlinearly constrai- ned m...
none6siThis paper explores the potential of Lagrangian duality for learning applications that featur...
none2This paper discusses a new method to perform propagation over a (two-layer, feed-forward) Neura...
We present a primal-dual algorithmic framework to obtain approximate solutions to a prototypical con...
Cette thèse s’inscrit dans le cadre de la conception, l’analyse et la mise en œuvre d’algorithmes ef...
Reinforcement learning is widely used in applications where one needs to perform sequential decision...
We define a primal-dual algorithm model (SOLA) for inequality constrained optimization problems that...
Optimization methods are at the core of many problems in signal/image processing, computer vision, a...
International audienceOptimization methods are at the core of many problems in signal/image processi...