Ideas of stochastic control have found applications in a variety of areas. A subclass of the problems with parameterized policies (including some stochastic impulse control problems) has received significant attention recently because of emerging applications in the areas of engineering, management, and mathematical finance. However, explicit solutions for this type of stochastic control problems only exist for some special cases, and effective numerical methods are relatively rare. Deriving efficient stochastic derivative estimators for payoff functions with discontinuities arising in many problems of practical interest is very challenging. Global optimization problems are extremely hard to solve due to the typical multimodal properties of...
The Handbook of Simulation Optimization presents an overview of the state of the art of simulation o...
This dissertation deals with linear systems subjected to stochastic disturbances. The class of stoch...
Model-based optimization methods are effective for solving optimization problems with little structu...
Ideas of stochastic control have found applications in a variety of areas. A subclass of the problem...
Many systems in logistics can be adequately modeled using stochastic discrete event simulation model...
This thesis proposes different problems of stochastic control and optimization that can be solved on...
Stochastic approximation is one of the oldest approaches for solving stochastic optimization problem...
textStochastic control is a broad tool with applications in several areas of academic interest. The...
Simulation based optimisation or simulation optimisation is an important field in stochastic optimis...
Stochastic optimization is a well-known challenging research topic. As of the literature, simulation...
Approaches like finite differences with common random numbers, infinitesimal perturbation analysis, ...
All companies are challenged to match supply and demand, and the way the company tackles this challe...
We consider optimizing a stochastic system, given only a simulation model that is parameterized by c...
We consider optimizing a stochastic system, given only a simulation model that is parameterized by c...
Stochastic optimization and simulation are two of the most fundamental research areas in Operations ...
The Handbook of Simulation Optimization presents an overview of the state of the art of simulation o...
This dissertation deals with linear systems subjected to stochastic disturbances. The class of stoch...
Model-based optimization methods are effective for solving optimization problems with little structu...
Ideas of stochastic control have found applications in a variety of areas. A subclass of the problem...
Many systems in logistics can be adequately modeled using stochastic discrete event simulation model...
This thesis proposes different problems of stochastic control and optimization that can be solved on...
Stochastic approximation is one of the oldest approaches for solving stochastic optimization problem...
textStochastic control is a broad tool with applications in several areas of academic interest. The...
Simulation based optimisation or simulation optimisation is an important field in stochastic optimis...
Stochastic optimization is a well-known challenging research topic. As of the literature, simulation...
Approaches like finite differences with common random numbers, infinitesimal perturbation analysis, ...
All companies are challenged to match supply and demand, and the way the company tackles this challe...
We consider optimizing a stochastic system, given only a simulation model that is parameterized by c...
We consider optimizing a stochastic system, given only a simulation model that is parameterized by c...
Stochastic optimization and simulation are two of the most fundamental research areas in Operations ...
The Handbook of Simulation Optimization presents an overview of the state of the art of simulation o...
This dissertation deals with linear systems subjected to stochastic disturbances. The class of stoch...
Model-based optimization methods are effective for solving optimization problems with little structu...