International audienceMany stochastic dynamic programming tasks in continuous action-spaces are tackled through discretization. We here avoid discretization; then, approximate dynamic programming (ADP) involves (i) many learning tasks, performed here by Support Vector Machines, for Bellman-function-regression (ii) many non-linearoptimization tasks for action-selection, for which we compare many algorithms. We include discretizations of the domain as particular non-linear-programming-tools in our experiments, so that by the way we compare optimization approaches and discretization methods. We conclude that robustness is strongly required in the non-linear-optimizations in ADP, and experimental results show that (i) discretization is sometime...
Introduction to Stochastic Dynamic Programming presents the basic theory and examines the scope of a...
This paper studies the dynamic programming principle for general convex stochastic optimization prob...
Problems involving optimal sequential making in uncertain dynamic systems arise in domains such as e...
International audienceMany stochastic dynamic programming tasks in continuous action-spaces are tack...
We present experimental results about learning function values (i.e. Bellman values) in stochastic d...
This description of stochastic dynamical optimization models is intended to exhibit some of the con...
Many problems that require decisions made over time can be formulated as dynamic linear programs. Co...
We propose an efficient machine learning algorithm for two-stage stochastic programs. This machine l...
Recent advances in algorithms for solving large linear programs, specifically constraint generation,...
This text gives a comprehensive coverage of how optimization problems involving decisions and uncert...
AbstractStochastic dynamic programs suffer from the so called curse of dimensionality whereby the nu...
Stochastic dynamic programming is a recursive method for solving sequential or multistage decision p...
This book explores discrete-time dynamic optimization and provides a detailed introduction to both d...
This paper develops a new method for constructing approximate solutions to discrete time, infinite h...
Stochastic optimization problems with an objective function that is additive over a finite number of...
Introduction to Stochastic Dynamic Programming presents the basic theory and examines the scope of a...
This paper studies the dynamic programming principle for general convex stochastic optimization prob...
Problems involving optimal sequential making in uncertain dynamic systems arise in domains such as e...
International audienceMany stochastic dynamic programming tasks in continuous action-spaces are tack...
We present experimental results about learning function values (i.e. Bellman values) in stochastic d...
This description of stochastic dynamical optimization models is intended to exhibit some of the con...
Many problems that require decisions made over time can be formulated as dynamic linear programs. Co...
We propose an efficient machine learning algorithm for two-stage stochastic programs. This machine l...
Recent advances in algorithms for solving large linear programs, specifically constraint generation,...
This text gives a comprehensive coverage of how optimization problems involving decisions and uncert...
AbstractStochastic dynamic programs suffer from the so called curse of dimensionality whereby the nu...
Stochastic dynamic programming is a recursive method for solving sequential or multistage decision p...
This book explores discrete-time dynamic optimization and provides a detailed introduction to both d...
This paper develops a new method for constructing approximate solutions to discrete time, infinite h...
Stochastic optimization problems with an objective function that is additive over a finite number of...
Introduction to Stochastic Dynamic Programming presents the basic theory and examines the scope of a...
This paper studies the dynamic programming principle for general convex stochastic optimization prob...
Problems involving optimal sequential making in uncertain dynamic systems arise in domains such as e...