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Fitness Proportionate Niching: Harnessing the Power of Evolutionary Algorithms for Evolving Cooperative Populations and Dynamic Clustering.

机译:适度适度的利基:利用进化算法的力量来发展合作种群和动态聚类。

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摘要

Evolutionary algorithms work on the notion of "best fit will survive" criteria. This makes evolving a cooperative and diverse population in a competing environment via evolutionary algorithms a challenging task. Analogies to species interactions in natural ecological systems have been used to develop methods for maintaining diversity in a population. One such area that mimics species interactions in natural systems is the use of niching. Niching methods extend the application of EAs to areas that seeks to embrace multiple solutions to a given problem. The conventional fitness sharing technique has limitations when the multimodal fitness landscape has unequal peaks. Higher peaks are strong population attractors. And this technique suffers from the `curse of population size' in attempting to discover all optimum points. The use of high population size makes the technique computationally complex, especially when there is a big jump in fitness values of the peaks. This work introduces a novel bio-inspired niching technique, termed Fitness Proportionate Niching (FPN), based on the analogy of finite resource model where individuals share the resource of a niche in proportion to their actual fitness. FPN makes the search algorithm unbiased to the variation in fitness values of the peaks and hence mitigates the drawbacks of conventional fitness sharing. FPN extends the global search ability of Genetic Algorithms (GAs) for evolving hierarchical cooperation in genetics-based machine learning and dynamic clustering. To this end, this work introduces FPN based resource sharing which leads to the formation of a viable default hierarchy in classifiers for the first time. It results in the co-evolution of default and exception rules, which lead to a robust and concise model description. The work also explores the feasibility and success of FPN for dynamic clustering. Unlike most other clustering techniques, FPN based clustering does not require any a priori information on the distribution of the data.
机译:进化算法遵循“最佳匹配将生存”的标准。这使得通过进化算法在竞争环境中发展合作且多样化的种群成为一项艰巨的任务。已经使用与自然生态系统中物种相互作用的类比来开发维持种群多样性的方法。在自然系统中模仿物种相互作用的一个领域是小生境的使用。适当的方法将EA的应用扩展到了试图为给定问题提供多种解决方案的领域。当多峰健身景观具有不相等的峰值时,常规健身共享技术会受到限制。高峰是吸引人口的主要因素。这项技术在试图发现所有最佳点时会遭受“人口规模的诅咒”。高人口规模的使用使该技术的计算复杂,尤其是在峰的适应度值有较大跳跃时。这项工作在有限资源模型的基础上,引入了一种新的生物启发式小生境技术,称为“适度适度小生境”(FPN),在这种模式中,个人根据自己的实际适应度共享利基资源。 FPN使搜索算法不受峰值适应度值变化的影响,因此减轻了传统适应度共享的弊端。 FPN扩展了遗传算法(GAs)的全局搜索能力,以发展基于遗传的机器学习和动态聚类中的层次化协作。为此,这项工作引入了基于FPN的资源共享,这首次导致在分类器中形成可行的默认层次结构。它导致默认规则和异常规则的共同发展,从而导致健壮而简洁的模型描述。该工作还探讨了FPN用于动态聚类的可行性和成功性。与大多数其他群集技术不同,基于FPN的群集不需要有关数据分布的任何先验信息。

著录项

  • 作者

    Workineh, Abrham Tibebu.;

  • 作者单位

    North Carolina Agricultural and Technical State University.;

  • 授予单位 North Carolina Agricultural and Technical State University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 137 p.
  • 总页数 137
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:42:09

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