Effectiveness of approximation strategy in surrogate-assisted fireworks algorithm

被引:0
作者
Yan Pei
Shaoqiu Zheng
Ying Tan
Hideyuki Takagi
机构
[1] The University of Aizu,Computer Science Division
[2] Peking University,Department of Machine Intelligence, School of Electronics Engineering and Computer Science, Key Laboratory of Machine Perception (Ministry of Education)
[3] Kyushu University,Faculty of Design
来源
International Journal of Machine Learning and Cybernetics | 2015年 / 6卷
关键词
Fireworks algorithm; Fitness landscape approximation ; Elite strategy; Surrogate-assisted fireworks algorithm; Dimensionality reduction;
D O I
暂无
中图分类号
学科分类号
摘要
We investigate the effectiveness of approximation strategy in a surrogate-assisted fireworks algorithm, which obtains the elite from approximate fitness landscape to enhance its optimization performance. We study the effectiveness of approximation strategy from the aspects of approximation method, sampling data selection method and sampling size. We discuss and analyse the optimization performance of each method. For the approximation method, we use least square approximation, spline interpolation, Newton interpolation, and support vector regression to approximate fitness landscape of fireworks algorithm in projected lower dimensional, original and higher dimensional search space. With regard to the sampling data selection method, we define three approaches, i.e., best sampling method, distance near the best fitness individual sampling method, and random sampling method to investigate each sampling method’s performance. With regard to sample size, this is set as 3, 5, and 10 sampling data in both the approximation method and sampling method. We discuss and compare the optimization performance of each method using statistical tests. The advantages of the fireworks algorithm, a number of open topics, and new discoveries arising from evaluation results, such as multi-production mechanism of the fireworks algorithm, optimization performance of each method, elite rank, interpolation times and extrapolation times of elites are analysed and discussed.
引用
收藏
页码:795 / 810
页数:15
相关论文
共 36 条
  • [1] Brest J(2006)Self-adapting control parameters in differential evolution: a comparative study on numerical benchmark problems IEEE Trans Evol Comput 10 646-657
  • [2] Greiner S(2011)Enhanced differential evolution with adaptive stategies for numerical optimization IEEE Trans Syst Man Cybern 41 397-413
  • [3] Boskovic B(2011)Swarm intelligence for non-negative matrix factorization Int J Swarm Intell Res (IJSIR) 2 12-34
  • [4] Mernik M(2005)A comprehensive survey of fitness approximation in evolutionary computation Soft comput 9 3-12
  • [5] Zumer V(2015)A new metaheuristic for optimization: optics inspired optimization (OIO) Comput Oper Res 55 99-125
  • [6] Gong W(2010)Research frontier: memetic computation—past, present and future IEEE Comput Intell Mag 5 24-31
  • [7] Cai Z(2014)Chaotic evolution: fusion of chaotic ergodicity and evolutionary iteration for optimization Natural Comput 13 79-96
  • [8] Ling CX(2013)Accelerating IEC and EC searches with elite obtained by dimensionality reduction in regression spaces J Evolut Intell 6 27-40
  • [9] Li C(2009)Differential evolution algorithm with strategy adaptition for global numberical optimization IEEE Trans Evol Comput 13 398-417
  • [10] Janecek A(2015)Water cycle algorithm with evaporation rate for solving constrained and unconstrained optimization problems Appl Soft Comput 30 58-71