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INVESTIGATIONS INTO LAMARCKISM,BALDWINISM AND LOCAL SEARCH IN GRAMMATICAL EVOLUTION GUIDED BY REINFORCEMENT

机译:钢筋引导下的语法进化中的拉马克,鲍德温斯主义和局部搜索的调查

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摘要

Grammatical Evolution Guided by Reinforcement is an extension of Grammatical Evolution that tries to improve the evolutionary process adding a learning process for all the individuals in the population. With this aim, each individual is given a chance to learn through a reinforcement learning mechanism during its lifetime. The learning process is completed with a Lamarckian mechanism in which an original genotype is replaced by the best learnt genotype for the individual. In a way, Grammatical Evolution Guided by Reinforcement shares an important feature with other hybrid, algorithms, i.e. global search in the evolutionary process combined with local search in the learning process. In this paper the role of the Lamarck Hypothesis is reviewed and a solution inspired only in the Baldwin effect is included as well. Besides, different techniques about the trade-off between exploitation and exploration in the reinforcement learning step followed by Grammatical Evolution Guided by Reinforcement are studied. In order to evaluate the results, the system is applied on two different domains: a simple autonomous navigation problem in a simulated Kephera robot and a typical Boolean function problem.
机译:以强化为指导的语法进化是语法进化的延伸,它试图改善进化过程,为人口中的所有个体增加学习过程。为此,每个人都有机会在其一生中通过强化学习机制进行学习。学习过程是通过Lamarckian机制完成的,其中原始基因型被个体最佳的学习基因型取代。在某种程度上,以强化为指导的语法进化与其他混合算法具有一个重要特征,即,进化过程中的全局搜索与学习过程中的局部搜索相结合。本文对拉马克假说的作用进行了回顾,并提出了仅受鲍德温效应启发的解决方案。此外,研究了在强化学习步骤之后,在强化指导下的语法演变中,有关开采与勘探之间权衡取舍的不同技术。为了评估结果,将系统应用于两个不同的领域:模拟的Kephera机器人中的简单自主导航问题和典型的布尔函数问题。

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