会议专题

An Efficient Ensemble of GA and PSO for Real Function Optimization

Wolpert and Macready asserted that no single search algorithm is best on average for all problems, which is confirmed by most practical experiences. Therefore, optimization results are highly dependent on which optimization algorithm is selected and what values its parameters take. So, it is interesting to explore some more robust optimization ensembles to reduce this dependency. This paper proposed a simple and efficient ensemble model of genetic algorithm (GA) and particle swarm optimization (PSO). This ensemble holds one population called public population on which GA and PSO run. After running on the public population, each component optimization gets an offspring population. Then the next generation public population will be renewed by the combination of both offspring populations according to their best individuals’ fitness. In order to illustrate that the ensemble is superior to its component algorithms, we compared this ensemble with GA and PSO on a suit of 36 widely used benchmark problems. Results show that the ensemble is best on many more benchmarks than PSO or GA in terms of whether the average best or the best of 30 independent trials, especially in high dimensional spaces.

ensemble GA PSO optimization

Xinsheng Lai Mingyi Zhang

Department of mathematics and computer Shangrao Normal University Shangrao, China Guizhou Normal University Guizhou Academy of Sciences Guiyang, China

国际会议

2009 2nd IEEE International Conference on Computer Science and Information Technology(第二届计算机科学与信息技术国际会议 ICCSIT2009)

北京

英文

1312-1316

2009-08-08(万方平台首次上网日期,不代表论文的发表时间)