The formulation of dynamic stochastic programmes for financial applications generally requires the definition of a risk-reward objective function and a financial stochastic model to represent the uncertainty underlying the decision problem. The solution of the optimization problem and the quality of the resulting strategy will depend critically on the adopted financial model and its consistency with observed market dynamics. We present a recursive scenario approximation approach suitable for financial management problems, leading to a minimal yet sufficient representation of the randomness underlying the decision problem. The method relies on the definition of a benchmark probability space generated through Monte Carlo simulation and the im...
The field of multi-stage stochastic programming provides a rich modelling framework to tackle a broa...
<div><p>ABSTRACT In this paper, we provide an empirical discussion of the differences among some sce...
The field of multi-stage stochastic programming provides a rich modelling framework to tackle a broa...
To solve a decision problem under uncertainty via stochastic programming means to choose or to build...
In recent years, stochastic programming has gained an increasing popularity within the mathematical ...
Problems of portfolio management can be viewed as multi-period dynamic decision problems. We present...
This thesis deals with multi-stage stochastic programming in the context of random process represent...
This thesis deals with multi-stage stochastic programming in the context of random process represent...
This thesis deals with multi-stage stochastic programming in the context of random process represent...
Multistage stochastic programs are effective for solving long-term planning problems under uncertain...
Abstract The quality of multi-stage stochastic optimization models as they appear in asset liability...
Scenario generation is the construction of a discrete random vector to represent parameters of uncer...
This thesis deals with multi-stage stochastic linear programming and its ap- plictions in the portfo...
Scenario generation is the construction of a discrete random vector to represent parameters of uncer...
Stochastic Programming (SP) models are widely used for real life problems involving uncertainty. The...
The field of multi-stage stochastic programming provides a rich modelling framework to tackle a broa...
<div><p>ABSTRACT In this paper, we provide an empirical discussion of the differences among some sce...
The field of multi-stage stochastic programming provides a rich modelling framework to tackle a broa...
To solve a decision problem under uncertainty via stochastic programming means to choose or to build...
In recent years, stochastic programming has gained an increasing popularity within the mathematical ...
Problems of portfolio management can be viewed as multi-period dynamic decision problems. We present...
This thesis deals with multi-stage stochastic programming in the context of random process represent...
This thesis deals with multi-stage stochastic programming in the context of random process represent...
This thesis deals with multi-stage stochastic programming in the context of random process represent...
Multistage stochastic programs are effective for solving long-term planning problems under uncertain...
Abstract The quality of multi-stage stochastic optimization models as they appear in asset liability...
Scenario generation is the construction of a discrete random vector to represent parameters of uncer...
This thesis deals with multi-stage stochastic linear programming and its ap- plictions in the portfo...
Scenario generation is the construction of a discrete random vector to represent parameters of uncer...
Stochastic Programming (SP) models are widely used for real life problems involving uncertainty. The...
The field of multi-stage stochastic programming provides a rich modelling framework to tackle a broa...
<div><p>ABSTRACT In this paper, we provide an empirical discussion of the differences among some sce...
The field of multi-stage stochastic programming provides a rich modelling framework to tackle a broa...