The migration interval is one of the fundamental parameters governing the dynamic behaviour of island models. Yet, there is little understanding on how this parameter affects performance, and how to optimally set it given a problem in hand. We propose schemes for adapting the migration interval according to whether fitness improvements have been found. As long as no improvement is found, the migration interval is increased to minimise communication. Once the best fitness has improved, the migration interval is decreased to spread new best solutions more quickly. We provide a method for obtaining upper bounds on the expected running time and the communication effort, defined as the expected number of migrants sent. Example applications of th...
Nowadays, parallel genetic algorithms are one of the most used meta-heuristics for solving combinato...
Parallelizing is a straightforward approach to reduce the total computation time of evolutionary alg...
[[abstract]]In this paper, the effects of adapting the migration intervals on the performance and so...
Island models denote a distributed system of evolutionary algorithms which operate independently, bu...
Island models are popular ways of parallelizing evolutionary algorithms as they can decrease the par...
A simple island model with λλ islands and migration occurring after every ττ iterations is studi...
A need for solving more and more complex problems drives the Evolutionary Computation community towa...
We present a general method for analyzing the runtime of parallel evolutionary algorithms with spati...
Migration of individuals allows a fruitful interaction between subpopulations in the island model, a...
Migration of individuals allows a fruitful interaction between subpopulations in the island model, a...
Parallelization of an evolutionary algorithm takes the advantage of modular population division and ...
Migration of individuals between populations may increase the selection pressure. This has the desir...
[[abstract]]In this paper, the issue of adapting migration parameters for MGAs is investigated. We e...
International audienceDynamic island models are population-based algorithms for solving optimization...
In this paper, the issue of adapting migration parameters for MGAs is investigated. We examine, in p...
Nowadays, parallel genetic algorithms are one of the most used meta-heuristics for solving combinato...
Parallelizing is a straightforward approach to reduce the total computation time of evolutionary alg...
[[abstract]]In this paper, the effects of adapting the migration intervals on the performance and so...
Island models denote a distributed system of evolutionary algorithms which operate independently, bu...
Island models are popular ways of parallelizing evolutionary algorithms as they can decrease the par...
A simple island model with λλ islands and migration occurring after every ττ iterations is studi...
A need for solving more and more complex problems drives the Evolutionary Computation community towa...
We present a general method for analyzing the runtime of parallel evolutionary algorithms with spati...
Migration of individuals allows a fruitful interaction between subpopulations in the island model, a...
Migration of individuals allows a fruitful interaction between subpopulations in the island model, a...
Parallelization of an evolutionary algorithm takes the advantage of modular population division and ...
Migration of individuals between populations may increase the selection pressure. This has the desir...
[[abstract]]In this paper, the issue of adapting migration parameters for MGAs is investigated. We e...
International audienceDynamic island models are population-based algorithms for solving optimization...
In this paper, the issue of adapting migration parameters for MGAs is investigated. We examine, in p...
Nowadays, parallel genetic algorithms are one of the most used meta-heuristics for solving combinato...
Parallelizing is a straightforward approach to reduce the total computation time of evolutionary alg...
[[abstract]]In this paper, the effects of adapting the migration intervals on the performance and so...