【24h】

A representational ecology for learning classifier systems

机译:学习分类器系统的代表性生态

获取原文

摘要

The representation used by a learning algorithm introduces a bias which is more or less well-suited to any given learning problem. It is well known that, across all possible problems, one algorithm is no better than any other. Accordingly, the traditional approach in machine learning is to choose an appropriate representation making use of some domain-specific knowledge, and this representation is then used exclusively during the learning process.To reduce reliance on domain-knowledge and its appropriate use it would be desirable for the learning algorithm to select its own representation for the problem.We investigate this with XCS, a Michigan-style Learning Classifier System.We begin with an analysis of two representations from the literature: hyperplanes and hyperspheres. We then apply XCS with either one or the other representation to two Boolean functions, the well-known multiplexer function and a function defined by hyperspheres, and confirm that planes are better suited to the multiplexer and spheres to the sphere-based function.Finally, we allow both representations to compete within XCS, which learns the most appropriate representation for problem thanks to the pressure against overlapping rules which its niche GA supplies. The result is an ecology in which the representations are species.
机译:学习算法使用的表示会引入偏差,该偏差或多或少非常适合于任何给定的学习问题。众所周知,在所有可能的问题中,一种算法并不比其他任何算法都要好。因此,机器学习的传统方法是利用一些特定领域的知识来选择合适的表示形式,然后在学习过程中专门使用这种表示形式。我们使用密歇根州风格的学习分类器系统XCS对此进行了研究。我们首先分析了文献中的两种表示形式:超平面和超球体。然后,我们将具有一个或另一个表示形式的XCS应用于两个布尔函数(众所周知的多路复用器函数和超球体定义的函数),并确认平面更适合于多路复用器,并且球体更适合基于球的函数。我们允许两种表示形式在XCS内竞争,这要归功于其利基GA所提供的针对重叠规则的压力,从而为问题学习了最合适的表示形式。结果是一种以种为代表的生态学。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号