Modular network SOM (mnSOM): from vector space to function space

T. Furukawa, K. Tokunaga, Kenji Morishita, S. Yasui
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引用次数: 29

Abstract

Kohonen's self-organizing map (SOM), which performs topology-preserving transformation from a high dimensional data vector space to a low-dimensional map space, provides a powerful tool for data analysis, classification and visualization in many application fields. Despite its power, SOM can only deal with vectorized data, although many expansions have been proposed for various data-type cases. This study aims to develop a novel generalization of SOM called modular network SOM (mnSOM), which enables users to deal with general data classes in a consistent manner. mnSOM has an array structure consisting of function modules that are trainable neural networks, e.g. multi-layer perceptrons (MLPs), instead of the vector units of the conventional SOM family. In the case of MLP-modules, mnSOM learns a group of systems or functions in terms of the input-output relationships, and at the same time, mnSOM generates a feature map that shows distances between the learned systems. Thus, mnSOM with MLP modules is an SOM in function space rather than in vector space. From this point of view, the conventional SOM of Kohonen's can be regarded as a special case of mnSOM, the modules consisting of fixed-value bias units. In this paper, mnSOM with MLP modules is described along with some application examples.
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模块化网络SOM (mnSOM):从向量空间到函数空间
Kohonen自组织映射(SOM)实现了从高维数据向量空间到低维地图空间的拓扑保持转换,在许多应用领域为数据分析、分类和可视化提供了强大的工具。尽管它很强大,但SOM只能处理向量化的数据,尽管已经针对各种数据类型的情况提出了许多扩展。本研究旨在开发一种称为模块化网络SOM (mnSOM)的SOM的新泛化,使用户能够以一致的方式处理一般数据类。mnSOM具有由可训练神经网络的功能模块组成的数组结构,例如多层感知器(mlp),而不是传统SOM家族的向量单元。在mlp模块的情况下,mnSOM根据输入输出关系学习一组系统或功能,同时,mnSOM生成一个特征图,显示学习系统之间的距离。因此,具有MLP模块的mnSOM是函数空间中的SOM,而不是向量空间中的SOM。从这个角度来看,Kohonen的传统SOM可以看作是mnSOM的一个特例,即由固定值偏置单元组成的模块。本文介绍了带MLP模块的mnSOM,并给出了一些应用实例。
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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Conference topics An analysis of underfitting in MLP networks Modular network SOM (mnSOM): from vector space to function space A motion trajectory based video retrieval system using parallel adaptive self organizing maps Neural network model for time series prediction by reinforcement learning
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