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Extracted global structure makes local building block processing effective in XCS

机译:提取的全局结构使本地构建块处理在XCS中有效

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Michigan-style learning classifier systems (LCSs), such as the accuracy-based XCS system, evolve distributed problem solutions represented by a population of rules. Recently, it was shown that decomposable problems may require effective processing of subsets of problem attributes, which cannot be generally assured with standard crossover operators. A number of competent crossover operators capable of effective identification and processing of arbitrary subsets of variables or string positions were proposed for genetic and evolutionary algorithms. This paper effectively introduces two competent crossover operators to XCS by incorporating techniques from competent genetic algorithms (GAs): the extended compact GA (ECGA) and the Bayesian optimization algorithm (BOA). Instead of applying standard crossover operators, here a probabilistic model of the global population is built and sampled to generate offspring classifiers locally. Various offspring generation methods are introduced and evaluated. Results indicate that the performance of the proposed learning classifier systems XCS/ECGA and XCS/BOA is similar to that of XCS with informed crossover operators that is given all information about problem structure on input and exploits this knowledge using problem-specific crossover operators.
机译:密歇根风格的学习分类器系统(LCSS),如基于精度的XCS系统,演变由规则群表示的分布式问题解决方案。最近,显示可分解的问题可能需要有效地处理问题属性的子集,这通常不能用标准交叉运算符来确保。提出了许多能够有效识别和处理任意亚空间或弦位置的任意亚群或串位置的能力交叉运算符。本文通过纳入主管遗传算法(气体)的技术有效地引入了两个主动的交叉运算符到XCS:扩展的紧凑型GA(ECGA)和贝叶斯优化算法(BOA)。这里没有应用标准交叉运算符,这里是构建和采样群体的概率模型,以在本地上生成后代分类器。介绍和评估各种后代生成方法。结果表明,所提出的学习分类器系统XCS / ECGA和XCS / BOA的性能类似于具有通知交叉运算符的XCS的性能,该XCS具有对输入上的问题结构的所有信息,使用特定于特定于问题的交叉运算符利用此知识。

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