AbstractThis paper analyzes the performance of local search algorithms (guided by the best-to-date solution at each iteration) in visiting suboptimal solutions for hard discrete optimization problems. The β-acceptable solution concept is used to capture how effectively an algorithm has performed to date and how effectively an algorithm can be expected to perform in the future in visiting suboptimal solutions. By this concept, an algorithm run is deemed a success if it reaches the level β, where β denotes an objective function value close to but still worse than the globally optimal value. A Markov chain state space reduction technique, state pooling, is introduced and used to obtain an estimator for the expected number of iterations to visi...
Abstract. With this paper we contribute to the understanding of the success of 2-opt based local sea...
Many decision problems contain, in some form, a NP-hard combinatorial problem. Therefore decision su...
Many discrete optimization problems of practical interest cannot be solved to optimality in the avai...
AbstractThis paper analyzes the performance of local search algorithms (guided by the best-to-date s...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...
We present a theoretical average-case analysis of a 2-opt algorithm for the traveling salesman probl...
Stochastic local search (SLS) algorithms are typically composed of a number of different components,...
Local search heuristics are an important class of algorithms for obtaining good solutions for hard c...
International audienceThis chapter sets up a formal framework for local search and provides a certai...
Combinatorial optimisation problems are an important and well-studied class of problems, with applic...
The traveling salesman problem (TSP) is presumably difficult to solve exactly using local search alg...
A Landscape State Machine (LSM) is a Markov model describing the transition probabilities between th...
This paper formalizes the problem of choosing online the number of explorations in a local search al...
Accelerated probabilistic modeling algorithms, presenting stochastic local search (SLS) technique, a...
The quality of solution provided by a search heuristic on a particular problem is by no means an abs...
Abstract. With this paper we contribute to the understanding of the success of 2-opt based local sea...
Many decision problems contain, in some form, a NP-hard combinatorial problem. Therefore decision su...
Many discrete optimization problems of practical interest cannot be solved to optimality in the avai...
AbstractThis paper analyzes the performance of local search algorithms (guided by the best-to-date s...
Local search is a widely used method to solve combinatorial optimization problems. As many relevant ...
We present a theoretical average-case analysis of a 2-opt algorithm for the traveling salesman probl...
Stochastic local search (SLS) algorithms are typically composed of a number of different components,...
Local search heuristics are an important class of algorithms for obtaining good solutions for hard c...
International audienceThis chapter sets up a formal framework for local search and provides a certai...
Combinatorial optimisation problems are an important and well-studied class of problems, with applic...
The traveling salesman problem (TSP) is presumably difficult to solve exactly using local search alg...
A Landscape State Machine (LSM) is a Markov model describing the transition probabilities between th...
This paper formalizes the problem of choosing online the number of explorations in a local search al...
Accelerated probabilistic modeling algorithms, presenting stochastic local search (SLS) technique, a...
The quality of solution provided by a search heuristic on a particular problem is by no means an abs...
Abstract. With this paper we contribute to the understanding of the success of 2-opt based local sea...
Many decision problems contain, in some form, a NP-hard combinatorial problem. Therefore decision su...
Many discrete optimization problems of practical interest cannot be solved to optimality in the avai...