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Interactive Genetic Algorithms with Fitness Adjustment 被引量:3

Interactive Genetic Algorithms with Fitness Adjustment
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摘要 Noises widely exist in interactive genetic algorithms. However, there is no effective method to solve this problem up to now. There are two kinds of noises, one is the noise existing in visual systems and the other is resulted from user’s preference mechanisms. Characteristics of the two noises are presented aiming at the application of interac- tive genetic algorithms in dealing with images. The evolutionary phases of interactive genetic algorithms are determined according to differences in the same individual’s fitness among different generations. Models for noises in different phases are established and the corresponding strategies for reducing noises are given. The algorithm proposed in this paper has been applied to fashion design, which is a typical example of image processing. The results show that the strategies can reduce noises in interactive genetic algorithms and improve the algorithm’s performance effectively. However, a further study is needed to solve the problem of determining the evolution phase by using suitable objective methods so as to find out an effective method to decrease noises. Noises widely exist in interactive genetic algorithms. However, there is no effective method to solve this problem up to now. There are two kinds of noises, one is the noise existing in visual systems and the other is resulted from user's preference mechanisms. Characteristics of the two noises are presented aiming at the application of interactive genetic algorithms in dealing with images. The evolutionary phases of interactive genetic algorithms are determined according to differences in the same individual's fitness among different generations. Models for noises in different phases are established and the corresponding strategies for reducing noises are given. The algorithm proposed in this paper has been applied to fashion design, which is a typical example of image processing. The results show that the strategies can reduce noises in interactive genetic algorithms and improve the algorithm's performance effectively. However, a further study is needed to solve the problem of determining the evolution phase by using suitable objective methods so as to find out an effective method to decrease noises.
出处 《Journal of China University of Mining and Technology》 EI 2006年第4期480-484,共5页 中国矿业大学学报(英文版)
基金 Project 60575046 supported by the National Natural Science Foundation of China
关键词 genetic algorithms interactive genetic algorithms NOISES strategies for reducing noises 图像信号处理 噪声 交互遗传算法 适合度
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  • 1Takagi H. Interactive evolutionary computation:Fusion of the capabilities of EC optimization and human evaluation[J]. Proc of the IEEE, 2001,89 (9) : 1275-1296.
  • 2Biles J A, Anderson P G, Loggi L W. Neural network fitness functions for a musical IGA[A]. Proc of the Int ICSC Symposium on Intelligent Industrial Automation and Soft Computing[C]. UK, 1996;B39-44.
  • 3Lee Joo-young, Cho Sung-bae. Sparse fitness evaluation for reducing user burden in interactive genetic algorithm [A]. 1999 IEEE Internatil Fuzzy Systems Conference Proceedings [C]. Seoul, 1999, 2:998-1003.
  • 4Sugimoto F, Yoneyama M. An evaluation of hybrid fitness assignment strategy in interactive genetic algorithm[A]. Proc of the 5th Australasia-Japan Joint Workshop on Intelligent and Evolutionary Systems[C].Dunedin, 2001 :62-69.
  • 5Takagi H. Interactive Evolutionary Computation: Fusion of the Capabilities of EC Optimization and Human Evaluation. Proc of the IEEE, 2001, 89(9): 1275- 1296.
  • 6Takagi H, Ohya K, Ohsaki M. Improvement of Input Interface for Interactive Genetic Algorithms and Its Evaluation. In: Proc of the 12th Symposium on Fuzzy System.. Tokyo, Japan, 1996, 513 -516.
  • 7Venturini G, Slimane M, Morin F. On Using Interactive Genetic Algorithms for Knowledge Discovery in Databases. In: Pmc of the 7th International Conference on Genetic Algorithms. London, UK,1997, 696 - 703.
  • 8Fang C, Chen J. A Study on Multi Criteria Decision Marking Mode: Interactive Genetic Algorithms Approach. In: Proc of the IEEE Conference on Systems, Man, and Cybernetics. Tokyo,Japan, 1999, 356- 362.
  • 9Oksaki M, Takagi H, Ohya K. An Input Method Using DiscreteFitness Values for Interactive GA. Intelligent and Fuzzy Systems,1998, 6:131 - 145.
  • 10Lee J Y, Cho S B. Sparse Fitness Evaluation for Reducing User Burden in Interactive Genetic Algorithm. In: Proc of the 8th linernational Conference on Fuzzy Systems. Seoul, South Korea, 1999,Ⅱ,998- 1003.

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