Title
The Effect of Sample Size on the Extended Self-Organizing Map Network for Market Segmentation
Abstract
Kohonen's Self-Organizing Map (SOM) network maps input data to a lower dimensional output map. The extended SOM network further groups the nodes on the output map into a user specified number of clusters. Kiang, Hu and Fisher used the extended SOM network for market segmentation and showed that the extended SOM provides better results than the statistical approach that reduces the dimensionality of the problem via factor analysis and then forms segments with cluster analysis. In this study we examine the effect of sample size on the extended SOM compared to that on the factor/cluster approach. Comparisons will be made using the correct classification rates between the two approaches at various sample sizes. Unlike statistical models, neural networks are not dependent on statistical assumptions. Thus we expect the results for neural network models to be stable across sample sizes but may be sensitive to initial weights and model specifications.
Year
DOI
Venue
2005
10.1109/HICSS.2005.590
HICSS
Keywords
Field
DocType
market segmentation,statistical approach,network maps input data,sample size,neural network,extended som network,extended self-organizing map network,various sample size,extended som,statistical model,statistical assumption,neural network model,factor analysis,model specification,sample sizes,cluster analysis,k means clustering
Cluster (physics),Data mining,Market segmentation,Computer science,Curse of dimensionality,Self-organizing map,Statistical model,Artificial neural network,Statistical assumption,Sample size determination
Conference
ISBN
Citations 
PageRank 
0-7695-2268-8-3
4
0.62
References 
Authors
5
4
Name
Order
Citations
PageRank
Melody Y. Kiang125925.18
Michael Y. Hu242655.74
Dorothy M. Fisher3575.49
Robert T. Chi4505.73