We discuss the almost-sure convergence of a broad class of sampling algorithms for multi-stage stochastic linear programs. We provide a convergence proof based on the finiteness of the set of distinct cutcoefficients. This differs from existing published proofs in that it does not require a restrictive assumption
2016-06-16Stochastic Programming (SP) has long been considered as a well-justified yet computational...
Recent developments in the area of reinforcement learning have yielded a number of new algorithms fo...
Monte Carlo sampling-based methods are frequently used in stochastic programming when exact solution...
We discuss the almost-sure convergence of a broad class of sampling algorithms for multi-stage stoch...
We introduce a class of algorithms, called Trajectory Following Dynamic Programming (TFDP) algorithm...
We consider a class of multistage stochastic linear programs in which at each stage a coherent risk ...
The paper presents a convergence proof for a broad class of sampling algorithms for multistage stoch...
International audienceWe prove the almost-sure convergence of a class of sampling-based nested decom...
Several attempt to dampen the curse of dimensionnality problem of the Dynamic Programming approach f...
We introduce a class of algorithms, called Trajectory Following Dynamic Programming (TFDP) algorithm...
Multi-stage stochastic programs (MSP) pose some of the more challenging optimizationproblems. Becaus...
In this dissertation, we focus on developing sampling-based algorithms for solving stochastic linear...
The Stochastic Dual Dynamic Programming (SDDP) algorithm has become one of the main tools to address...
This work focuses on the basic stochastic decomposition (SD) algorithm of Higle and Sen [J.L. Higle,...
Abstract In this paper, we study multistage stochastic mixed-integer nonlinear programs...
2016-06-16Stochastic Programming (SP) has long been considered as a well-justified yet computational...
Recent developments in the area of reinforcement learning have yielded a number of new algorithms fo...
Monte Carlo sampling-based methods are frequently used in stochastic programming when exact solution...
We discuss the almost-sure convergence of a broad class of sampling algorithms for multi-stage stoch...
We introduce a class of algorithms, called Trajectory Following Dynamic Programming (TFDP) algorithm...
We consider a class of multistage stochastic linear programs in which at each stage a coherent risk ...
The paper presents a convergence proof for a broad class of sampling algorithms for multistage stoch...
International audienceWe prove the almost-sure convergence of a class of sampling-based nested decom...
Several attempt to dampen the curse of dimensionnality problem of the Dynamic Programming approach f...
We introduce a class of algorithms, called Trajectory Following Dynamic Programming (TFDP) algorithm...
Multi-stage stochastic programs (MSP) pose some of the more challenging optimizationproblems. Becaus...
In this dissertation, we focus on developing sampling-based algorithms for solving stochastic linear...
The Stochastic Dual Dynamic Programming (SDDP) algorithm has become one of the main tools to address...
This work focuses on the basic stochastic decomposition (SD) algorithm of Higle and Sen [J.L. Higle,...
Abstract In this paper, we study multistage stochastic mixed-integer nonlinear programs...
2016-06-16Stochastic Programming (SP) has long been considered as a well-justified yet computational...
Recent developments in the area of reinforcement learning have yielded a number of new algorithms fo...
Monte Carlo sampling-based methods are frequently used in stochastic programming when exact solution...