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Towards generalization by identification-based XCS in multi-steps problem

机译:多步骤问题中基于标识的XCS的推广

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This paper extends an accuracy-based Learning Classifier System (XCS) to promote a generalization of classifiers by selecting effective ones and deleting ineffective ones, and calls it Identification-based XCS (IXCS). Through the intensive simulations of the Maze problem (Maze6), the following implications have been revealed : (1) IXCS can derive good solutions with a fewer number of classifiers in comparison with XCSG as one of the major conventional XCS; and (2) IXCS can not only generalize the classifiers faster but also generate the classifiers that are robust to the noisy environment.
机译:本文扩展了基于准确性的学习分类器系统(XCS),以通过选择有效分类器并删除无效分类器来促进分类器的泛化,并将其称为基于识别的XCS(IXCS)。通过对Maze问题(Maze6)的深入模拟,揭示了以下含义:(1)与作为主要常规XCS的XCSG相比,IXCS可以用较少的分类器得出良好的解决方案; (2)IXCS不仅可以更快地归纳分类器,还可以生成对嘈杂环境具有鲁棒性的分类器。

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