This paper discusses the use of probabilistic or randomized algorithms for solving combinatorial optimization problems. Our approach employs non-uniform probability distributions to add a biased random behavior to classical heuristics so a large set of alternative good solutions can be quickly obtained in a natural way and without complex con guration processes. This procedure is especially useful in problems where properties such as non-smoothness or non-convexity lead to a highly irregular solution space, for which the traditional optimization methods, both of exact and approximate nature, may fail to reach their full potential. The results obtained are promising enough to suggest that randomizing classical heuristics is a powerful method...
While research in robust optimization has attracted considerable interest over the last decades, its...
Since the introduction of mathematical programming it has been all too easy to identify real-world p...
Greedy algorithms provide a fast and often also effective solution to many combinatorial optimizatio...
Probabilistic methods have become an integral part of theoretical computer science. Typically, the u...
Randomized heuristics are widely used to solve large scale combinatorial optimization problems. Amon...
Soft constraints are quite common in real-life applications. For example, in freight transportation,...
In 1999, Chan proposed an algorithm to solve a given optimization problem: express the solution as t...
In modern computer science, many problems are solved with the help of probabilistic algorithms. This...
In theoretical computer science, various notions of efficiency are used for algorithms. The most com...
In this paper, we study the following robust optimization problem. Given an independence system and ...
Random key genetic algorithms are heuristic methods for solving combinatorial optimization problems....
Randomization has become a pervasive technique in combinatorial op-timization. We survey our thesis ...
We consider combinatorial optimization problems with random jointly normal costs. Target-probabili...
We present a probabilistic analysis for a large class of combinatorial optimization problems contain...
This chapter compiles a number of results that apply the theory of parameterized algorithmics to the...
While research in robust optimization has attracted considerable interest over the last decades, its...
Since the introduction of mathematical programming it has been all too easy to identify real-world p...
Greedy algorithms provide a fast and often also effective solution to many combinatorial optimizatio...
Probabilistic methods have become an integral part of theoretical computer science. Typically, the u...
Randomized heuristics are widely used to solve large scale combinatorial optimization problems. Amon...
Soft constraints are quite common in real-life applications. For example, in freight transportation,...
In 1999, Chan proposed an algorithm to solve a given optimization problem: express the solution as t...
In modern computer science, many problems are solved with the help of probabilistic algorithms. This...
In theoretical computer science, various notions of efficiency are used for algorithms. The most com...
In this paper, we study the following robust optimization problem. Given an independence system and ...
Random key genetic algorithms are heuristic methods for solving combinatorial optimization problems....
Randomization has become a pervasive technique in combinatorial op-timization. We survey our thesis ...
We consider combinatorial optimization problems with random jointly normal costs. Target-probabili...
We present a probabilistic analysis for a large class of combinatorial optimization problems contain...
This chapter compiles a number of results that apply the theory of parameterized algorithmics to the...
While research in robust optimization has attracted considerable interest over the last decades, its...
Since the introduction of mathematical programming it has been all too easy to identify real-world p...
Greedy algorithms provide a fast and often also effective solution to many combinatorial optimizatio...