Generating diverse populations of high quality solutions has gained interest as a promising extension to the traditional optimization tasks. We contribute to this line of research by studying evolutionary diversity optimization for two of the most prominent permutation problems, namely the Traveling Salesperson Problem (TSP) and Quadratic Assignment Problem (QAP). We explore the worst-case performance of a simple mutation-only evolutionary algorithm with different mutation operators, using an established diversity measure. Theoretical results show most mutation operators for both problems ensure production of maximally diverse populations of sufficiently small size within cubic expected run-time. We perform experiments on QAPLIB instances i...
Parameterized runtime analysis seeks to understand the influence of problem structure on algorithmic...
Recently Ulrich and Thiele [14] have introduced evolutionary algorithms for the mixed multi-objectiv...
TSP is a challenging and popular problem from combinatorial optimization. TSP is often tackled with ...
Evolving diverse sets of high quality solutions has gained increasing interest in the evolutionary c...
Evolutionary algorithms have successfully been applied to evolve problem instances that exhibit a si...
In this work, we consider the problem of finding a set of tours to a traveling salesperson problem (...
Evolutionary algorithms based on edge assembly crossover (EAX) constitute some of the best performin...
Diversity plays a crucial role in evolutionary computation. While diversity has been mainly used to ...
Computing diverse sets of high-quality solutions has gained increasing attention among the evolution...
There has been a growing interest in the evolutionary computation community to compute a diverse set...
Bioinspired algorithms, such as evolutionary algorithms and ant colony optimization, are widely used...
Premature convergence in the process of genetic algorithm (GA) for searching solution is frequently ...
Understanding the behaviour of heuristic search methods is a challenge. This even holds for simple l...
Evolutionary algorithms solve problems by simulating the evolution of a population of candidate solu...
We study the distribution of objective function values of a combinatorial optimization problem defin...
Parameterized runtime analysis seeks to understand the influence of problem structure on algorithmic...
Recently Ulrich and Thiele [14] have introduced evolutionary algorithms for the mixed multi-objectiv...
TSP is a challenging and popular problem from combinatorial optimization. TSP is often tackled with ...
Evolving diverse sets of high quality solutions has gained increasing interest in the evolutionary c...
Evolutionary algorithms have successfully been applied to evolve problem instances that exhibit a si...
In this work, we consider the problem of finding a set of tours to a traveling salesperson problem (...
Evolutionary algorithms based on edge assembly crossover (EAX) constitute some of the best performin...
Diversity plays a crucial role in evolutionary computation. While diversity has been mainly used to ...
Computing diverse sets of high-quality solutions has gained increasing attention among the evolution...
There has been a growing interest in the evolutionary computation community to compute a diverse set...
Bioinspired algorithms, such as evolutionary algorithms and ant colony optimization, are widely used...
Premature convergence in the process of genetic algorithm (GA) for searching solution is frequently ...
Understanding the behaviour of heuristic search methods is a challenge. This even holds for simple l...
Evolutionary algorithms solve problems by simulating the evolution of a population of candidate solu...
We study the distribution of objective function values of a combinatorial optimization problem defin...
Parameterized runtime analysis seeks to understand the influence of problem structure on algorithmic...
Recently Ulrich and Thiele [14] have introduced evolutionary algorithms for the mixed multi-objectiv...
TSP is a challenging and popular problem from combinatorial optimization. TSP is often tackled with ...