Some of the most important and challenging problems in computer science and operations research are stochastic combinatorial optimization (SCO) problems. SCO deals with a class of combinatorial optimization models and algorithms in which some of the data are subject to significant uncertainty and evolve over time, and often discrete decisions need to be made before observing complete future data. Therefore, under such circumstances it becomes necessary to develop models and algorithms in which plans are evaluated against possible future scenarios that represent alternative outcomes of data. Consequently, SCO models are characterized by a large number of scenarios, discrete decision variables and constraints. This dissertation focuses on the...
THE “BEST ” ALGORITHM FOR SOLVING STOCHASTIC MIXED INTEGER PROGRAMS We present a new algorithm for s...
Many combinatorial optimization problems (COPs) encountered in real-world logistics, transportation,...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
This paper presents comparative computational results using three decomposition algo-rithms on a bat...
This paper presents comparative computational results using three decomposition algorithms on a batt...
Many practical problems from industry that contain uncertain demands, costs and other quantities are...
Combinatorial optimization problems have applications in a variety of sciences and engineering. In t...
Abstract. Combinatorial optimization problems have applications in a variety of sciences and enginee...
This paper introduces disjunctive decomposition for two-stage mixed 0-1 stochastic integer programs ...
This thesis, presented in view of obtaining an accreditation to supervise research, describes the re...
A number of problems in relational Artificial Intelligence can be viewed as Stochastic Constraint Op...
Decision making under uncertainty is an important topic in many Industries, such as telecommunicatio...
Abstract. This paper presents an investigation on the computational complexity of stochastic optimiz...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
\u3cp\u3eThis paper presents an investigation on the computational complexity of stochastic optimiza...
THE “BEST ” ALGORITHM FOR SOLVING STOCHASTIC MIXED INTEGER PROGRAMS We present a new algorithm for s...
Many combinatorial optimization problems (COPs) encountered in real-world logistics, transportation,...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
This paper presents comparative computational results using three decomposition algo-rithms on a bat...
This paper presents comparative computational results using three decomposition algorithms on a batt...
Many practical problems from industry that contain uncertain demands, costs and other quantities are...
Combinatorial optimization problems have applications in a variety of sciences and engineering. In t...
Abstract. Combinatorial optimization problems have applications in a variety of sciences and enginee...
This paper introduces disjunctive decomposition for two-stage mixed 0-1 stochastic integer programs ...
This thesis, presented in view of obtaining an accreditation to supervise research, describes the re...
A number of problems in relational Artificial Intelligence can be viewed as Stochastic Constraint Op...
Decision making under uncertainty is an important topic in many Industries, such as telecommunicatio...
Abstract. This paper presents an investigation on the computational complexity of stochastic optimiz...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
\u3cp\u3eThis paper presents an investigation on the computational complexity of stochastic optimiza...
THE “BEST ” ALGORITHM FOR SOLVING STOCHASTIC MIXED INTEGER PROGRAMS We present a new algorithm for s...
Many combinatorial optimization problems (COPs) encountered in real-world logistics, transportation,...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...