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Emergent geometric organization and informative dimensions in coevolutionary algorithms.

机译:协同进化算法中的新兴几何组织和信息量。

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摘要

Coevolutionary algorithms vary entities which can play two or more distinct, interacting roles, with the hope of producing raw material from which a highly-capable composition can be constructed. Ranging in complexity from autodidactic checkers-learning systems to the evolution of competing agents in 3-d simulated physics, applications of these algorithms have proved both motivating and perplexing. Successful applications inspire further application, supporting the belief that a correctly implemented form of evolution by natural selection can produce highly-capable entities with minimal human input or intervention. However, the successes to date have generated limited insight into how to transfer success to other domains. On the other hand, failed applications leave behind a frustratingly opaque trace of misbehavior. In either case, the question of what worked or what went wrong is often left open.;One impediment to understanding the dynamics of coevolutionary algorithms is that the interactive domains explored by these algorithms typically lack an explicit objective function. Such a function is a clear guide for judging the progress or regress of an algorithm. However, in the absence of an explicit yardstick to judge the value of coevolving entities, how should they be measured?;To begin addressing this question, we start with the observation that in any interaction, an entity is not only performing a task, it is also informing about the capabilities of its interactants. In other words, an interaction can provide a measurement. Entities themselves can therefore be treated as measuring rods, here dubbed informative dimensions, against which other entities are incented to improve. It is argued that when entities are only incented to perform well, and adaptation of the function of measurement is neglected, algorithms tend not to keep informative dimensions and thus fail to produce high-performing entities.;It is demonstrated empirically that algorithms which are sensitized to these yardsticks through an informativeness mechanism have better dynamic behavior; in particular, known pathologies such as overspecialization, cycling, or relative overgeneralization are mitigated. We argue that in these cases an emergent geometric organization of the population implicitly maintains informative dimensions, providing a direction to the evolving population and so permitting continued improvement.
机译:协同进化算法会改变实体,这些实体可以扮演两个或多个不同的,相互作用的角色,以期希望能生产出可以构成高功能组合物的原材料。从自动教学棋盘格学习系统到3D模拟物理学中竞争性代理的复杂性,这些算法的应用已被证明具有激励性和困惑性。成功的应用激发了进一步的应用,支持了这样一种信念,即通过自然选择正确实现进化形式可以以最少的人工投入或干预就可以生产出功能强大的实体。但是,迄今为止的成功对如何将成功转移到其他领域产生了有限的见识。另一方面,失败的应用程序会留下令人沮丧的不透明行为。在任何一种情况下,什么起作用或哪里出了问题的问题通常是悬而未决的。理解协同进化算法动力学的一个障碍是,这些算法探索的交​​互域通常缺乏明确的目标函数。这样的功能是判断算法进度或回归的清晰指南。但是,在没有明确的标准来判断共同发展的实体的价值的情况下,应如何衡量它们呢?为了解决这个问题,我们首先观察到,在任何交互作用中,实体不仅在执行任务,而且还在执行任务。还告知其交互者的功能。换句话说,交互可以提供度量。因此,实体本身可以被视为衡量标尺,在这里被称为信息化维度,其他实体也希望以此为基础进行改进。有人认为,当只激励实体表现良好,而忽略了对测量功能的适应性时,算法往往无法保持信息量,从而无法产生高性能实体。;经验证明,敏感的算法通过信息机制使这些标准具有更好的动态行为;特别是可以缓解已知的病理情况,例如过度专业化,骑自行车或相对过度概括。我们认为,在这些情况下,新兴的人口几何组织隐含了信息量,为不断发展的人口提供了方向,因此可以继续改善。

著录项

  • 作者

    Bucci, Anthony.;

  • 作者单位

    Brandeis University.;

  • 授予单位 Brandeis University.;
  • 学科 Artificial Intelligence.;Computer Science.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 180 p.
  • 总页数 180
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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