A stagewise decomposition algorithm called value function gradient learning (VFGL) is proposed for large-scale multistage stochastic convex programs. VFGL finds the parameter values that best fit the gradient of the value function within a given parametric family. Widely used decomposition algorithms for multistage stochastic programming, such as stochastic dual dynamic programming (SDDP), approximate the value function by adding linear subgradient cuts at each iteration. Although this approach has been successful for linear problems, nonlinear problems may suffer from the increasing size of each subproblem as the iteration proceeds. On the other hand, VFGL has a fixed number of parameters; thus, the size of the subproblems remains constant...
This thesis investigates the following question: Can supervised learning techniques be successfully ...
International audienceWe prove the almost-sure convergence of a class of sampling-based nested decom...
This paper presents a new and high performance solution method for multistage stochastic convex prog...
A stagewise decomposition algorithm called ???value function gradient learning??? (VFGL) is proposed...
A general decomposition framework for large convex optimization problems based on augmented Lagrangi...
Several attempt to dampen the curse of dimensionnality problem of the Dynamic Programming approach f...
In this dissertation, we focus on developing sampling-based algorithms for solving stochastic linear...
Stochastic gradient method Consider the stochastic programming min x∈X F(x) = Eξf (x; ξ). Stochasti...
Stochastic linear programming problems are linear programming problems for which one or more data el...
We introduce a class of algorithms, called Trajectory Following Dynamic Programming (TFDP) algorithm...
How to make decisions while the future is full of uncertainties is a major problem shared virtually ...
Recent advances in algorithms for solving large linear programs, specifically constraint generation,...
Stochastic gradient descent is the method of choice for solving large-scale optimization problems in...
AbstractQuadratic stochastic programming (QSP) in which each subproblem is a convex piecewise quadra...
In multistage decision problems, it is often the case that an initial strategic decision (such as in...
This thesis investigates the following question: Can supervised learning techniques be successfully ...
International audienceWe prove the almost-sure convergence of a class of sampling-based nested decom...
This paper presents a new and high performance solution method for multistage stochastic convex prog...
A stagewise decomposition algorithm called ???value function gradient learning??? (VFGL) is proposed...
A general decomposition framework for large convex optimization problems based on augmented Lagrangi...
Several attempt to dampen the curse of dimensionnality problem of the Dynamic Programming approach f...
In this dissertation, we focus on developing sampling-based algorithms for solving stochastic linear...
Stochastic gradient method Consider the stochastic programming min x∈X F(x) = Eξf (x; ξ). Stochasti...
Stochastic linear programming problems are linear programming problems for which one or more data el...
We introduce a class of algorithms, called Trajectory Following Dynamic Programming (TFDP) algorithm...
How to make decisions while the future is full of uncertainties is a major problem shared virtually ...
Recent advances in algorithms for solving large linear programs, specifically constraint generation,...
Stochastic gradient descent is the method of choice for solving large-scale optimization problems in...
AbstractQuadratic stochastic programming (QSP) in which each subproblem is a convex piecewise quadra...
In multistage decision problems, it is often the case that an initial strategic decision (such as in...
This thesis investigates the following question: Can supervised learning techniques be successfully ...
International audienceWe prove the almost-sure convergence of a class of sampling-based nested decom...
This paper presents a new and high performance solution method for multistage stochastic convex prog...