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A Coevolution Approach for Learning Multimodal Concepts

机译:一种学习多式联概念的共同思想方法

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摘要

In this paper, we propose a cooperative coevolution approach to learn rules for the description of multimodal concepts. Multiple species are evolved in parallel; each evolves a particular part of the description of the target concepts. The algorithm allows the number and roles of the species to be adapted; more accurate and general rules are generated. The proposed algorithm has been compared to other two popular concept learning algorithms on five benchmark datasets from the UCI machine learning repository. Results show that the proposed algorithm can achieve higher performance while still produces a smaller number of rules.
机译:在本文中,我们提出了一种合作的共同研究方法来学习多式联概念描述的规则。多种物种并联演变;每个人都演变了目标概念的描述的特定部分。该算法允许调整物种的数量和角色;生成更准确和一般规则。已经将所提出的算法与来自UCI机器学习存储库的五个基准数据集上的其他两个流行的概念学习算法进行了比较。结果表明,该算法可以实现更高的性能,同时仍然产生较少数量的规则。

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