Information acquisition performance by supervised information-theoretic self-organizing maps

R. Kamimura
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引用次数: 3

Abstract

In this paper, we propose a new type of supervised multi-layered self-organizing map and examine to what extent information content in multi-layered networks can be increased. We have so far introduced the information-theoretic SOM in a single layer for increasing information content. However, we have found some cases where information content cannot be increased by single-layer networks. We used the multi-layered network and we found that mutual information tended to increase even for higher layers. The corresponding U-matrices showed clearer class structure even for higher layers. Then, we applied the method to the improvement of prediction performance. The prediction performance could be improved when the number of layers was appropriately chosen.
有监督的信息论自组织映射的信息获取性能
本文提出了一种新的有监督的多层自组织映射,并研究了多层网络中的信息内容可以增加到什么程度。到目前为止,我们已经在单层中引入了信息论SOM来增加信息内容。然而,我们发现一些情况下,单层网络不能增加信息内容。我们使用多层网络,我们发现互信息倾向于在更高层增加。相应的u矩阵即使在更高的层中也显示出更清晰的类结构。然后,我们将该方法应用于预测性能的提高。选择适当的层数可以提高预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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