首页> 外文会议>Genetic and Evolutionary Computation Conference Pt.2 Jul 12-16, 2003 Chicago, IL, USA >Bounding the Population Size in XCS to Ensure Reproductive Opportunities
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Bounding the Population Size in XCS to Ensure Reproductive Opportunities

机译:限制XCS中的人口规模以确保生殖机会

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Despite several recent successful comparisons and applications of the accuracy-based learning classifier system XCS, it is hardly understood how crucial parameters should be set in XCS nor how XCS can be expect to scale up in larger problems. Previous research identified a covering challenge in XCS that needs to be obeyed to ensure that the genetic learning process takes place. Furthermore, a schema challenge was identified that, once obeyed, ensures the existence of accurate classifiers. This paper departs from these challenges deriving a reproductive opportunity bound. The bound assures that more accurate classifiers get a chance for reproduction. The relation to the previous bounds as well as to the specificity pressure in XCS are discussed as well. The derived bound shows that XCS scales in a machine learning competitive way.
机译:尽管基于精度的学习分类器系统XCS最近进行了几次成功的比较和应用,但几乎不了解应如何在XCS中设置关键参数,也不能期望XCS在更大的问题中得到扩展。先前的研究确定了XCS中的一项覆盖性挑战,必须确保该挑战能够确保基因学习过程的进行。此外,还确定了模式挑战,一旦遵循,将确保存在准确的分类器。本文从这些挑战出发,得出了生殖机会的界限。边界确保更准确的分类器有繁殖的机会。还讨论了与先前界限的关系以及与XCS中的特异性压力的关系。得出的界限表明XCS以机器学习竞争方式进行扩展。

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