可分离空间
数学
符号
变量(数学)
二进制数
比例(比率)
功能(生物学)
算法
组合数学
离散数学
计算机科学
算术
量子力学
进化生物学
生物
物理
数学分析
作者
Xiaoliang Ma,Zhi-tao Huang,Xiaodong Li,Lei Wang,Yutao Qi,Zexuan Zhu
标识
DOI:10.1109/tevc.2022.3144684
摘要
The divide-and-conquer strategy has been widely used in cooperative co-evolutionary algorithms to deal with large-scale global optimization problems, where a target problem is decomposed into a set of lower-dimensional and tractable subproblems to reduce the problem complexity. However, such a strategy usually demands a large number of function evaluations to obtain an accurate variable grouping. To address this issue, a merged differential grouping (MDG) method is proposed in this article based on the subset–subset interaction and binary search. In the proposed method, each variable is first identified as either a separable variable or a nonseparable variable. Afterward, all separable variables are put into the same subset, and the nonseparable variables are divided into multiple subsets using a binary-tree-based iterative merging method. With the proposed algorithm, the computational complexity of interaction detection is reduced to $O(\max \{n,n_{ns}\times \log _{2} k\})$ , where $n$ , $n_{ns}(\leq n)$ , and $k( < n)$ indicate the numbers of decision variables, nonseparable variables, and subsets of nonseparable variables, respectively. The experimental results on benchmark problems show that MDG is very competitive with the other state-of-the-art methods in terms of efficiency and accuracy of problem decomposition.
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