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Explicit Class Structure by Weighted Cooperative Learning

机译:加权合作学习明确的阶级结构

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In this paper, we propose a new type of information-theoretic method called "weighted cooperative learning." In this method, two networks, namely, cooperative and uncooperative networks are prepared. The roles of these networks are controlled by the cooperation parameter α. As the parameter is increased, the role of cooperative networks becomes more important in learning. In addition, the importance of input units or variables is incorporated in the learning in terms of mutual information. We applied the method to the housing data from the machine learning database. Experimental results showed that weighted cooperative learning could be used to improve performance in terms of quantization and topographic errors. In addition, we could obtain much clearer class boundaries on the U-matrix by the weighted cooperative learning.
机译:在本文中,我们提出了一种称为“加权合作学习”的新型信息理论方法。在该方法中,准备两个网络,即合作和不合作网络。这些网络的角色由合作参数α控制。随着参数的增加,合作网络的作用在学习方面变得更加重要。此外,在相互信息方面,输入单元或变量的重要性被纳入了学习。我们将该方法应用于来自机器学习数据库的外壳数据。实验结果表明,在量化和地形误差方面可用于提高性能的加权协作学习。此外,我们可以通过加权合作学习在U形矩阵上获得更清晰的阶级边界。

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