We provide a dynamic programming principle for stochastic optimal control problems with expectation constraints. A weak formulation, using test functions and a probabilistic relaxation of the constraint, avoids restrictions related to a measurable selection but still implies the Hamilton-Jacobi-Bellman equation in the viscosity sense. We treat open state constraints as a special case of expectation constraints and prove a comparison theorem to obtain the equation for closed state constraints
We study a class of Markovian optimal stochastic control problems in which the controlled process $Z...
We prove a weak version of the dynamic programming principle for standard stochastic control problem...
This thesis looks at a few different approaches to solving stochas-tic optimal control problems with...
We provide a dynamic programming principle for stochastic optimal control problems with expectation ...
International audienceWe provide a dynamic programming principle for stochastic optimal control prob...
International audienceWe provide a dynamic programming principle for stochastic optimal control prob...
We provide a dynamic programming principle for stochastic optimal control problems with expectation ...
In this paper, we study a stochastic recursive optimal control problem in which the value functional...
We study a combined optimal control/stopping problem under a nonlinear expectation Ef induced by a B...
We consider optimal control problems with state constraint, where states X-t given as solutions of c...
International audienceWe study a combined optimal control/stopping problem under a nonlinear expecta...
International audienceWe study a combined optimal control/stopping problem under a nonlinear expecta...
International audienceWe prove a weak version of the dynamic programming principle for standard stoc...
International audienceWe prove a weak version of the dynamic programming principle for standard stoc...
We prove a weak version of the dynamic programming principle for standard stochastic control problem...
We study a class of Markovian optimal stochastic control problems in which the controlled process $Z...
We prove a weak version of the dynamic programming principle for standard stochastic control problem...
This thesis looks at a few different approaches to solving stochas-tic optimal control problems with...
We provide a dynamic programming principle for stochastic optimal control problems with expectation ...
International audienceWe provide a dynamic programming principle for stochastic optimal control prob...
International audienceWe provide a dynamic programming principle for stochastic optimal control prob...
We provide a dynamic programming principle for stochastic optimal control problems with expectation ...
In this paper, we study a stochastic recursive optimal control problem in which the value functional...
We study a combined optimal control/stopping problem under a nonlinear expectation Ef induced by a B...
We consider optimal control problems with state constraint, where states X-t given as solutions of c...
International audienceWe study a combined optimal control/stopping problem under a nonlinear expecta...
International audienceWe study a combined optimal control/stopping problem under a nonlinear expecta...
International audienceWe prove a weak version of the dynamic programming principle for standard stoc...
International audienceWe prove a weak version of the dynamic programming principle for standard stoc...
We prove a weak version of the dynamic programming principle for standard stochastic control problem...
We study a class of Markovian optimal stochastic control problems in which the controlled process $Z...
We prove a weak version of the dynamic programming principle for standard stochastic control problem...
This thesis looks at a few different approaches to solving stochas-tic optimal control problems with...