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Selective information enhancement learning for creating interpretable representations in competitive learning.

机译:选择性信息增强学习,用于在竞争性学习中创建可解释的表示形式。

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In this paper, we propose a new information-theoretic method, called "selective information enhancement learning," to explicitly interpret final representations created by learning. More specifically, we aim to make class boundaries obtained by learning as overt as possible by picking up the small number of important variables. The variable selection is performed by information enhancement in which mutual information between input patterns and competitive units is measured, while focusing upon a specific input variable. When this information is larger, the importance of the variable is higher. With selected and important variables, a network is retrained by free energy minimization. With this free energy minimization, we can obtain connection weights by considering the importance of specific variables. We applied the method to an artificial data problem, the Senate problem and the voting attitude problem, all of which are easily obtained for purposes of reproduction. Experimental results for all three problems showed that clear class boundaries could be obtained with a smaller number of variables. In addition, we could observe that a smaller number of input variables tended to have the majority of information on input patterns. This tendency became more explicit when the network size was large.
机译:在本文中,我们提出了一种新的信息理论方法,称为“选择性信息增强学习”,以明确解释通过学习创建的最终表示形式。更具体地说,我们的目标是通过学习少量重要变量,使通过学习获得的班级界限尽可能公开。通过信息增强来执行变量选择,在信息增强中,在关注特定输入变量的同时,测量输入模式与竞争单位之间的相互信息。当此信息较大时,变量的重要性较高。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。通过这种自由能的最小化,我们可以通过考虑特定变量的重要性来获得连接权重。我们将该方法应用于人工数据问题,参议院问题和投票态度问题,所有这些问题都可以轻松获取以进行复制。对所有三个问题的实验结果表明,使用较少数量的变量可以获得清晰的类边界。此外,我们可以观察到,较少数量的输入变量倾向于具有大多数有关输入模式的信息。当网络规模很大时,这种趋势变得更加明显。

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