A novel neural network for four-term analogy based on area representation

Kenji Mizoguchi, M. Hagiwara
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引用次数: 2

Abstract

We propose a novel neural network for four-term analogy based on area representation. It can deal with four-term analogy such as "teacher: student=doctor: ?". The proposed network is composed of three map layers and an input layer. The area representation method based on Kohonen feature map (KFM) is employed in order to represent knowledge, so that similar concepts are mapped in nearer area in the map layer. The proposed mechanism in the map layer can realize the movement of the excited area to the near area. We carried out some computer simulations and confirmed as follows: 1) similar concepts are mapped in the nearer area in the map layer; 2) the excited area moves among similar concepts; 3) the proposed network realizes four-term analogy; and 4) the network is robust for the lack of connections.
基于区域表示的四项类比神经网络
提出了一种基于区域表示的四项类比神经网络。它可以处理“老师:学生=医生:?”等四项类比。该网络由三个映射层和一个输入层组成。采用基于Kohonen特征图(KFM)的区域表示方法来表示知识,使相似的概念映射到地图层更近的区域。所提出的映射层机制可以实现激发区域向附近区域的移动。我们进行了一些计算机模拟,证实了以下几点:1)在地图层较近的区域绘制了相似的概念;2)激发区在相似概念之间移动;3)该网络实现了四项类比;4)网络是健壮的,因为没有连接。
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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