In this thesis we focus on Stochastic combinatorial Optimization Problems (SCOPs), a wide class of combinatorial optimization problems under uncertainty, where part of the information about the problem data is unknown at the planning stage, but some knowledge about its probability distribution is assumed.<p><p>Optimization problems under uncertainty are complex and difficult, and often classical algorithmic approaches based on mathematical and dynamic programming are able to solve only very small problem instances. For this reason, in recent years metaheuristic algorithms such as Ant Colony Optimization, Evolutionary Computation, Simulated Annealing, Tabu Search and others, are emerging as successful alternatives to classical approaches.<p>...
<p>The focus of this thesis is on the design and analysis of algorithms for basic problems in Stocha...
The Probabilistic Traveling Salesman Problem (PTSP) is a TSP problem where each customer has a given...
Ant colony system is a well known metaheuristic framework, and many efficient algorithms for differe...
Metaheuristics are general algorithmic frameworks, often nature-inspired, designed to solve complex ...
Stochastic combinatorial optimization problems are combinatorial optimization problems where part of...
In the last decades there has been a lot of interest in computational models and metaheuristics algo...
Abstract. Metaheuristics are a class of effective algorithms for optimization prob-lems. A basic imp...
Bioinspired algorithms, such as evolutionary algorithms and ant colony optimization, are widely used...
A variety of modern heuristic algorithms for combinatorial optimization problems are based on comput...
Nowadays, there is an increasing dependence on metaheuristic algorithms for solving combinatorial op...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
The paper introduces ACO/F-Race, an algorithm for tackling combinatorial optimization problems under...
Abstract. In practical applications, one can take advantage of metaheuristics in different ways: To ...
In this paper we propose a new metaheuristic algorithm for solving stochastic multiobjective combina...
This article analyzes the performance of metaheuristics on the vehicle routing problem with stochast...
<p>The focus of this thesis is on the design and analysis of algorithms for basic problems in Stocha...
The Probabilistic Traveling Salesman Problem (PTSP) is a TSP problem where each customer has a given...
Ant colony system is a well known metaheuristic framework, and many efficient algorithms for differe...
Metaheuristics are general algorithmic frameworks, often nature-inspired, designed to solve complex ...
Stochastic combinatorial optimization problems are combinatorial optimization problems where part of...
In the last decades there has been a lot of interest in computational models and metaheuristics algo...
Abstract. Metaheuristics are a class of effective algorithms for optimization prob-lems. A basic imp...
Bioinspired algorithms, such as evolutionary algorithms and ant colony optimization, are widely used...
A variety of modern heuristic algorithms for combinatorial optimization problems are based on comput...
Nowadays, there is an increasing dependence on metaheuristic algorithms for solving combinatorial op...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
The paper introduces ACO/F-Race, an algorithm for tackling combinatorial optimization problems under...
Abstract. In practical applications, one can take advantage of metaheuristics in different ways: To ...
In this paper we propose a new metaheuristic algorithm for solving stochastic multiobjective combina...
This article analyzes the performance of metaheuristics on the vehicle routing problem with stochast...
<p>The focus of this thesis is on the design and analysis of algorithms for basic problems in Stocha...
The Probabilistic Traveling Salesman Problem (PTSP) is a TSP problem where each customer has a given...
Ant colony system is a well known metaheuristic framework, and many efficient algorithms for differe...