Randomized search heuristics, among them randomized local search and evolutionary algorithms, are applied to problems whose structure is not well understood, as well as to problems in combinatorial optimization. The analysis of these randomized search heuristics has been started for some well-known problems, and this approach is followed here for the minimum spanning tree problem. After motivating this line of research, it is shown that randomized search heuristics find minimum spanning trees in expected polynomial time without employing the global technique of greedy algorithms. © 2006 Elsevier Ltd. All rights reserved.Frank Neumann, Ingo Wegene
Given a connected, undirected graph G with labeled edges, the minimum-label spanning tree problem se...
This paper presents an experimental investigation into the properties of the optimal communication s...
The bounded-degree minimum spanning tree (BDMST) problem has many practical applications. Unlike th...
AbstractRandomized search heuristics, among them randomized local search and evolutionary algorithms...
Abstract. Randomized search heuristics, among them randomized local search and evolutionary algorith...
Randomized search heuristics have widely been applied to complex engineering problems as well as to ...
This chapter compiles a number of results that apply the theory of parameterized algorithmics to the...
Evolutionary algorithms are applied to problems that are not well understood as well as to problems ...
This paper studies heuristics for the minimum labelling spanning tree (MLST) problem. The purpose is...
We present a randomized linear-time algorithm to find a minimum spanning tree in a connected graph w...
We consider a family of local search algorithms for the minimum-weight spanning tree, indexed by a p...
Randomized search heuristics like evolutionary algorithms are mostly applied to problems whose struc...
The features of an evolutionary algorithm that most determine its performance are the coding by whic...
A major challenge to solving multiobjective optimization problems is to capture possibly all the (re...
The Minimum Spanning Tree problem is a well-known combinatorial optimization problem, which has attr...
Given a connected, undirected graph G with labeled edges, the minimum-label spanning tree problem se...
This paper presents an experimental investigation into the properties of the optimal communication s...
The bounded-degree minimum spanning tree (BDMST) problem has many practical applications. Unlike th...
AbstractRandomized search heuristics, among them randomized local search and evolutionary algorithms...
Abstract. Randomized search heuristics, among them randomized local search and evolutionary algorith...
Randomized search heuristics have widely been applied to complex engineering problems as well as to ...
This chapter compiles a number of results that apply the theory of parameterized algorithmics to the...
Evolutionary algorithms are applied to problems that are not well understood as well as to problems ...
This paper studies heuristics for the minimum labelling spanning tree (MLST) problem. The purpose is...
We present a randomized linear-time algorithm to find a minimum spanning tree in a connected graph w...
We consider a family of local search algorithms for the minimum-weight spanning tree, indexed by a p...
Randomized search heuristics like evolutionary algorithms are mostly applied to problems whose struc...
The features of an evolutionary algorithm that most determine its performance are the coding by whic...
A major challenge to solving multiobjective optimization problems is to capture possibly all the (re...
The Minimum Spanning Tree problem is a well-known combinatorial optimization problem, which has attr...
Given a connected, undirected graph G with labeled edges, the minimum-label spanning tree problem se...
This paper presents an experimental investigation into the properties of the optimal communication s...
The bounded-degree minimum spanning tree (BDMST) problem has many practical applications. Unlike th...