We present a general method for analyzing the runtime of parallel evolutionary algorithms with spatially structured populations. Based on the fitness-level method, it yields upper bounds on the expected parallel runtime. This allows for a rigorous estimate of the speedup gained by parallelization. Tailored results are given for common migration topologies: ring graphs, torus graphs, hypercubes, and the complete graph. Example applications for pseudo-Boolean optimization show that our method is easy to apply and that it gives powerful results. In our examples the performance guarantees improve with the density of the topology. Surprisingly, even sparse topologies such as ring graphs lead to a significant speedup for many functions while not ...
In this paper we develop a study on several types of parallel genetic algorithms (PGAs). Our motivat...
In this paper we develop a study on several types of parallel genetic algorithms (PGAs). Our mo-tiva...
Evolution algorithms for combinatorial optimization have been proposed in the 70's. They did not hav...
We present a general method for analyzing the runtime of parallel evolutionary algorithms with spati...
International audienceWe study mathematically and experimentally the conver-gence rate of differenti...
peer reviewedThis paper proposes a theoretical and experimental analysis of the expected running tim...
Most real-life data analysis problems are difficult to solve using exact methods, due to the size of...
The parallel genetic algorithm (PGA) uses two major modifications compared to the genetic algorithm....
'Evolutionary algorithms' is the collective name for a group of relatively new stochastic search alg...
The paper presents an analysis of the use of optimization algorithms in parallel solutions and distr...
This paper examines the effects of relaxed synchronization on both the numerical and parallel effici...
Genetic algorithms, a stochastic evolutionary computing technique, have demonstrated a capacity for ...
textabstractThe importance and potential of Gray-Box Optimization (GBO) with evolutionary algorithms...
Parallel genetic algorithms (PGAs) have been traditionally used to extend the power of serial geneti...
Parallelization of an evolutionary algorithm takes the advantage of modular population division and ...
In this paper we develop a study on several types of parallel genetic algorithms (PGAs). Our motivat...
In this paper we develop a study on several types of parallel genetic algorithms (PGAs). Our mo-tiva...
Evolution algorithms for combinatorial optimization have been proposed in the 70's. They did not hav...
We present a general method for analyzing the runtime of parallel evolutionary algorithms with spati...
International audienceWe study mathematically and experimentally the conver-gence rate of differenti...
peer reviewedThis paper proposes a theoretical and experimental analysis of the expected running tim...
Most real-life data analysis problems are difficult to solve using exact methods, due to the size of...
The parallel genetic algorithm (PGA) uses two major modifications compared to the genetic algorithm....
'Evolutionary algorithms' is the collective name for a group of relatively new stochastic search alg...
The paper presents an analysis of the use of optimization algorithms in parallel solutions and distr...
This paper examines the effects of relaxed synchronization on both the numerical and parallel effici...
Genetic algorithms, a stochastic evolutionary computing technique, have demonstrated a capacity for ...
textabstractThe importance and potential of Gray-Box Optimization (GBO) with evolutionary algorithms...
Parallel genetic algorithms (PGAs) have been traditionally used to extend the power of serial geneti...
Parallelization of an evolutionary algorithm takes the advantage of modular population division and ...
In this paper we develop a study on several types of parallel genetic algorithms (PGAs). Our motivat...
In this paper we develop a study on several types of parallel genetic algorithms (PGAs). Our mo-tiva...
Evolution algorithms for combinatorial optimization have been proposed in the 70's. They did not hav...