Title :
Self-organizing maps, vector quantization, and mixture modeling
Author_Institution :
RWCP Theoret. Found. SNN, Nijmegen Univ., Netherlands
fDate :
11/1/2001 12:00:00 AM
Abstract :
Self-organizing maps are popular algorithms for unsupervised learning and data visualization. Exploiting the link between vector quantization and mixture modeling, we derive expectation-maximization (EM) algorithms for self-organizing maps with and without missing values. We compare self-organizing maps with the elastic-net approach and explain why the former is better suited for the visualization of high-dimensional data. Several extensions and improvements are discussed. As an illustration we apply a self-organizing map based on a multinomial distribution to market basket analysis
Keywords :
data visualisation; maximum likelihood estimation; self-organising feature maps; unsupervised learning; vector quantisation; EM algorithms; VQ; data visualization; elastic-net approach; expectation-maximization algorithms; mixture modeling; self-organizing maps; unsupervised learning; vector quantization; Algorithm design and analysis; Annealing; Clustering algorithms; Data visualization; Entropy; Self organizing feature maps; Standards publication; Topology; Unsupervised learning; Vector quantization;
Journal_Title :
Neural Networks, IEEE Transactions on