档案保存XCS分类系统的初步研究

T. Komine, Masaya Nakata, K. Takadama
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引用次数: 0

摘要

在动态环境中,学习分类器系统(LCS)不断发展适合当前情况的分类器,但可能会忘记对以前情况有用的分类器。我们的主要想法是,我们将被遗忘的分类器存储为存档,并通过重组它们来生成新的分类器,以适应当前的情况。具体来说,我们提出了一种基于归档的LCS,称为Arc-XCS,它可以检测环境变化并根据归档生成分类器。在基准问题上的实验结果表明,Arc-XCS在每次环境发生变化时都能成功地存储良好的分类器;与传统LCS (XCS)相比,Arc-XCS的训练量更少,性能更好。
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Archives-holding XCS Classifier System: A preliminary study
In dynamic environment, Learning Classifier System (LCS) evolves classifiers to fit the current situation, but may forget classifiers which were useful for previous situations. Our main idea is that, we store the forgotten classifiers as archives and generate new classifiers by recombining them to fit the current situation. Specifically, we propose an archive-based LCS called Arc-XCS, which detects environmental changes and generates classifiers based on the archive. The experimental results on the benchmark problem show that, Arc-XCS successfully stored good classifiers when each environmental changes occurs; compared to the conventional LCS (XCS), Arc-XCS reaches better performances with fewer trainings.
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