This thesis deals with multi-stage stochastic programming in the context of random process representation. Basic structure for random process is a scenario tree. The thesis introduces general and stage-independent scenario tree and their properties. Scenario trees can be also combined with Markov chains which describe the state of the system and determine which scenario tree should be used. Another structure which enables reduce the complexity of the problem is a scenario lattice. Scenario generation is performed using moment method. Scenario trees are used for representation of random returns as the input to the investment problem
This paper presents new algorithms for the dynamic generation of scenario trees for multistage stoch...
This thesis focuses on the stability of ALM models formulated as problems of multistage stochastic p...
To solve a decision problem under uncertainty via stochastic programming means to choose or to build...
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...
A major issue in any application of multistage stochastic programming is the representation of the u...
This thesis deals with multi-stage stochastic linear programming and its ap- plictions in the portfo...
In recent years, stochastic programming has gained an increasing popularity within the mathematical ...
Multistage stochastic programs are effective for solving long-term planning problems under uncertain...
The formulation of dynamic stochastic programmes for financial applications generally requires the d...
A multistage stochastic linear program (MSLP) is a model of sequential stochastic optimization where...
In stochastic programming models we always face the problem of how to represent the random variables...
A framework for the reduction of scenario trees as inputs of (linear) multi-stage stochastic program...
In stochastic programming models we always face the problem of how to represent the random variables...
In stochastic programming models we always face the problem of how to represent the random variables...
This paper presents new algorithms for the dynamic generation of scenario trees for multistage stoch...
This thesis focuses on the stability of ALM models formulated as problems of multistage stochastic p...
To solve a decision problem under uncertainty via stochastic programming means to choose or to build...
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...
A major issue in any application of multistage stochastic programming is the representation of the u...
This thesis deals with multi-stage stochastic linear programming and its ap- plictions in the portfo...
In recent years, stochastic programming has gained an increasing popularity within the mathematical ...
Multistage stochastic programs are effective for solving long-term planning problems under uncertain...
The formulation of dynamic stochastic programmes for financial applications generally requires the d...
A multistage stochastic linear program (MSLP) is a model of sequential stochastic optimization where...
In stochastic programming models we always face the problem of how to represent the random variables...
A framework for the reduction of scenario trees as inputs of (linear) multi-stage stochastic program...
In stochastic programming models we always face the problem of how to represent the random variables...
In stochastic programming models we always face the problem of how to represent the random variables...
This paper presents new algorithms for the dynamic generation of scenario trees for multistage stoch...
This thesis focuses on the stability of ALM models formulated as problems of multistage stochastic p...
To solve a decision problem under uncertainty via stochastic programming means to choose or to build...