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Selective enhancement learning in competitive learning

机译:竞争学习中的选择性增强学习

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In this paper, we propose a new information-theoretic method to explicitly interpret final representations created by learning. The new method, called ldquoselective enhancement learning,rdquo aims at producing explicit representation with fewer input variables. The variable selection is performed by information enhancement in which with a specific and enhanced variable, mutual information, is measured. As this information grows larger, the importance of the variable increases. With selected and important variables, a network is retrained by free energy minimization. In this free energy minimization, we can obtain connection weights by considering the importance of specific variables. When we applied the method to the Senate problem, experimental results showed that clear representations could be obtained with a smaller number of variables. This tendency was more explicit when the network was large.
机译:在本文中,我们提出了一种新的信息理论方法,以明确解释通过学习创建的最终表示形式。这种称为“选择性增强学习”的新方法旨在产生具有较少输入变量的显式表示。通过信息增强来执行变量选择,其中利用特定的和增强的变量来测量互信息。随着此信息的增加,变量的重要性也随之增加。通过选择重要的变量,可以通过最小化自由能来重新训练网络。在这种自由能的最小化中,我们可以通过考虑特定变量的重要性来获得连接权重。当我们将该方法应用于参议院问题时,实验结果表明可以使用较少数量的变量获得清晰的表示。当网络很大时,这种趋势更加明显。

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