In practise, it is often desirable to provide the decision-maker with a rich set of diverse solutions of decent quality instead of just a single solution. In this paper we study evolutionary diversity optimization for the knapsack problem (KP). Our goal is to evolve a population of solutions that all have a profit of at least (1 - ϵ) · OPT, where OPT is the value of an optimal solution. Furthermore, they should differ in structure with respect to an entropy-based diversity measure. To this end we propose a simple (μ + 1)-EA with initial approximate solutions calculated by a well-known FPTAS for the KP. We investigate the effect of different standard mutation operators and introduce biased mutation and crossover which puts strong probability...
In this paper, the 0-1 Knapsack Problem (KP) which occurs in many different applications is studied ...
Five different representations and associated variation operators are studied in the context of a st...
In this paper a new Genetic Algorithm based on a heuristic operator and Centre of Mass selection ope...
In practise, it is often desirable to provide the decision-maker with a rich set of diverse solution...
The chance-constrained knapsack problem is a variant of the classical knapsack problem where each it...
The chance-constrained knapsack problem is a variant of the classical knapsack problem where each it...
Evolutionary algorithms are bio-inspired algorithms that can easily adapt to changing environments. ...
Evolutionary algorithms are well suited for solving the knapsack problem. Some empirical studies cla...
Evolutionary algorithms are well suited for solving the knapsack problem. Some empirical studies cla...
We rigorously analyze the runtime of evolutionary algorithms for the classical knapsack problem wher...
Particle swarm optimization is a heuristic and stochastic technique inspired by the flock of birds w...
Evolutionary algorithms are bio-inspired algorithms that can easily adapt to changing environments. ...
Evolutionary algorithms are bio-inspired algorithms that can easily adapt to changing environments. ...
In this study, we consider the multi-objective multiple knapsack problem (MMKP) and we adapt our fav...
In this study, we consider the multi-objective multiple knapsack problem (MMKP) and we adapt our fav...
In this paper, the 0-1 Knapsack Problem (KP) which occurs in many different applications is studied ...
Five different representations and associated variation operators are studied in the context of a st...
In this paper a new Genetic Algorithm based on a heuristic operator and Centre of Mass selection ope...
In practise, it is often desirable to provide the decision-maker with a rich set of diverse solution...
The chance-constrained knapsack problem is a variant of the classical knapsack problem where each it...
The chance-constrained knapsack problem is a variant of the classical knapsack problem where each it...
Evolutionary algorithms are bio-inspired algorithms that can easily adapt to changing environments. ...
Evolutionary algorithms are well suited for solving the knapsack problem. Some empirical studies cla...
Evolutionary algorithms are well suited for solving the knapsack problem. Some empirical studies cla...
We rigorously analyze the runtime of evolutionary algorithms for the classical knapsack problem wher...
Particle swarm optimization is a heuristic and stochastic technique inspired by the flock of birds w...
Evolutionary algorithms are bio-inspired algorithms that can easily adapt to changing environments. ...
Evolutionary algorithms are bio-inspired algorithms that can easily adapt to changing environments. ...
In this study, we consider the multi-objective multiple knapsack problem (MMKP) and we adapt our fav...
In this study, we consider the multi-objective multiple knapsack problem (MMKP) and we adapt our fav...
In this paper, the 0-1 Knapsack Problem (KP) which occurs in many different applications is studied ...
Five different representations and associated variation operators are studied in the context of a st...
In this paper a new Genetic Algorithm based on a heuristic operator and Centre of Mass selection ope...