自编码
转化(遗传学)
水准点(测量)
数学优化
代表(政治)
变量(数学)
计算机科学
功能(生物学)
多目标优化
进化计算
过程(计算)
最优化问题
进化算法
人工智能
数学
进化策略
空格(标点符号)
进化规划
遗传算法
可变邻域搜索
局部搜索(优化)
作者
Songbai Liu,Jun Li,Qiuzhen Lin,Ye Tian,Jianqiang Li,Kay Chen Tan
标识
DOI:10.1109/tetci.2024.3369629
摘要
Addressing the challenge of efficiently handling high-dimensional search spaces in solving large-scale multiobjective optimization problems (LMOPs) becomes an emerging research topic in evolutionary computation. In response, this paper proposes a new evolutionary optimizer with a tactic of autoencoder-based problem transformation (APT). The APT involves creating an autoencoder to learn the relative importance of each variable by competitively reconstructing the dominated and non-dominated solutions. Using the learned importance, all variables are divided into multiple groups without consuming any function evaluations. The number of groups dynamically increases according to the population's evolutionary status. Each variable group has an associated autoencoder, transforming the search space into an adaptable small-scale representation space. Thus, the search process occurs within these dynamic representation spaces, leading to effective production of offspring solutions. To assess the effectiveness of APT, extensive testing is performed on benchmark suites and real-world LMOPs, encompassing variable sizes ranging from 10 3 to 10 4 . The comparative results demonstrate the advantages of our proposed optimizer in solving these LMOPs with a limited budget of 10 5 function evaluations.
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