期刊论文详细信息
International Journal of Physical Sciences
Linkage learning based on differences in local optimums of building blocks with one optima
Hamid Parvin1 
关键词: Linkage learning;    optimization problems;    decomposable functions.;   
DOI  :  10.5897/IJPS11.798
学科分类:物理(综合)
来源: Academic Journals
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【 摘 要 】

Genetic algorithms (GA) are categorized as search heuristics and have been broadly applied to optimization problems. These algorithms have been used for solving problems in many applications. Nevertheless, it has been shown that simple GA is not able to effectively solve complex real world problems. For proper solving of such problems, knowing the relationships between decision variables which is referred to as linkage learning is necessary. In this paper, a linkage learning approach is proposed that utilizes the special features of decomposable problems to solve them. The proposed approach is called Local optimums based linkage learner (LOLL). The LOLL algorithm is capable of identifying the groups of variables which are related to each other (known as linkage groups), not minding if these groups are overlapped or different in size. The proposed algorithm, unlike other linkage learning techniques, is not done along with optimization algorithm, but it is done in a whole separated phase from optimization search. After finding linkage group information by LOLL, the optimization search can use this information to solve the problem. LOLL is tested on some benchmarked decomposable functions. The results show that the algorithm is an efficient alternative to other linkage learning techniques.

【 授权许可】

CC BY   

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