We consider the information relaxation approach for calculating performance bounds for stochastic dynamic programs (DPs). This approach generates performance bounds by solving problems with relaxed nonanticipativity constraints and a penalty that punishes violations of these nonanticipativity constraints. In this paper, we study DPs that have a convex structure and consider gradient penalties that are based on first-order linear approximations of approximate value functions. When used with perfect information relaxations, these penalties lead to subproblems that are deterministic convex optimization problems. We show that these gradient penalties can, in theory, provide tight bounds for convex DPs and can be used to improve on bounds provid...
Information relaxation and duality in Markov decision processes have been studied recently by severa...
We consider the revenue management problem of finding profit-maximising prices for delivery time slo...
The linear programming (LP) approach has a long history in the theory of approximate dynamic program...
Dynamic programming is a principal method for analyzing stochastic optimal control problems. However...
We consider infinite horizon stochastic dynamic programs with discounted costs and study how to use ...
We present a general optimization-based framework for stochastic control problems with nonclassical ...
This book investigates convex multistage stochastic programs whose objective and constraint function...
We consider stochastic dynamic programming problems with high-dimensional, discrete state-spaces and...
We present a general optimization-based framework for stochastic control problems with non-classical...
This paper studies the dynamic programming principle for general convex stochastic optimization prob...
Stochastic optimal control studies the problem of sequential decision-making under uncertainty. Dyna...
We consider multistage stochastic optimization models. Logical or integrality constraints, frequentl...
Information relaxation and duality in Markov decision processes have been studied recently by severa...
134 pagesNonconvex optimizations are ubiquitous in many application fields. One important aspect of ...
Lagrangian relaxation and approximate optimization algorithms have received much attention in the la...
Information relaxation and duality in Markov decision processes have been studied recently by severa...
We consider the revenue management problem of finding profit-maximising prices for delivery time slo...
The linear programming (LP) approach has a long history in the theory of approximate dynamic program...
Dynamic programming is a principal method for analyzing stochastic optimal control problems. However...
We consider infinite horizon stochastic dynamic programs with discounted costs and study how to use ...
We present a general optimization-based framework for stochastic control problems with nonclassical ...
This book investigates convex multistage stochastic programs whose objective and constraint function...
We consider stochastic dynamic programming problems with high-dimensional, discrete state-spaces and...
We present a general optimization-based framework for stochastic control problems with non-classical...
This paper studies the dynamic programming principle for general convex stochastic optimization prob...
Stochastic optimal control studies the problem of sequential decision-making under uncertainty. Dyna...
We consider multistage stochastic optimization models. Logical or integrality constraints, frequentl...
Information relaxation and duality in Markov decision processes have been studied recently by severa...
134 pagesNonconvex optimizations are ubiquitous in many application fields. One important aspect of ...
Lagrangian relaxation and approximate optimization algorithms have received much attention in the la...
Information relaxation and duality in Markov decision processes have been studied recently by severa...
We consider the revenue management problem of finding profit-maximising prices for delivery time slo...
The linear programming (LP) approach has a long history in the theory of approximate dynamic program...