An Extension of Self-Organizing Maps to Categorical Data


Autoria(s): 陈宁; Marques NC
Data(s)

05/12/2005

Resumo

Self-organizing maps (SOM) have been recognized as a powerful tool in data exploratoration, especially for the tasks of clustering on high dimensional data. However, clustering on categorical data is still a challenge for SOM. This paper aims to extend standard SOM to handle feature values of categorical type. A batch SOM algorithm (NCSOM) is presented concerning the dissimilarity measure and update method of map evolution for both numeric and categorical features simultaneously.

Identificador

http://dspace.imech.ac.cn/handle/311007/13822

http://www.irgrid.ac.cn/handle/1471x/6636

Palavras-Chave #力学
Tipo

会议论文