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Adaptive simplex-GA hybrid for rule learning and parameter identification of complex systems.

机译:自适应单纯形GA混合算法,用于复杂系统的规则学习和参数识别。

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摘要

This dissertation puts forward an adaptive simplex-GA hybrid for rule learning and parameter identification of complex systems. A supervisory architecture is designed for optimization problems of complex systems. The upper supervisory layer uses domain knowledge to help gradually reduce the search space while the lower layer hybrid GA performs the actual optimization process within the range that the supervisory layer specifies. The proposed approach is applied to a real complex system—metabolic modeling and the results are better than those without using the supervisory architecture. An adaptive simplex genetic algorithm is also presented in which the percentage of simplex is self adaptive during the run. A set of rules is designed to adjust the simplex percentage by the feedback of fitness value. The new algorithm has been tested on both the sin function maximization problem and the real metabolic modeling problem, with results that are better than the fixed percentage approach. To further explore the application of GA on data mining area, an entropy-based adaptive GA approach for rule learning problems is put forward. Mutation inversion probability is self adaptive during the run and the trained classifier gives the final classification by entropy-based voting. This algorithm outperforms several other traditional data mining techniques on three testing databases.
机译:提出了一种用于复杂系统规则学习和参数辨识的自适应单纯形-GA混合算法。设计了一个监督体系结构来解决复杂系统的优化问题。上层监控层使用领域知识来帮助逐渐减少搜索空间,而下层混合GA在层指定的范围内执行实际的优化过程。所提出的方法适用于实际的复杂系统-代谢建模,其结果比不使用监督体系结构的结果更好。还提出了一种自适应单纯形遗传算法,其中在运行过程中,单纯形的百分比是自适应的。设计了一组规则,以通过适应度值的反馈来调整单纯形百分比。新算法已经在正弦函数最大化问题和实际代谢建模问题上进行了测试,其结果优于固定百分比方法。为了进一步探索遗传算法在数据挖掘领域的应用,提出了一种基于熵的自适应遗传算法解决规则学习问题。变异反转概率在运行过程中是自适应的,训练有素的分类器通过基于熵的投票给出最终分类。该算法在三个测试数据库上优于其他几种传统的数据挖掘技术。

著录项

  • 作者

    Yang, Linyu.;

  • 作者单位

    Texas A&M University.;

  • 授予单位 Texas A&M University.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2001
  • 页码 97 p.
  • 总页数 97
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

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