Visualizing Globalization: A Self-Organizing Maps Approach to Customer Profiling

This research demonstrates the usefulness of self-organizing maps (SOM) as an intuitive visual rendering of a globalization phenomenon. We propose a systematic neural-network-based segmentation scheme for identifying and subsequently profiling transnational segments based on consumers’ desired benefits. In the study, SOMs are used in grouping survey respondents from 16 countries in the Asia-Pacific region, Europe, South America, and North America on the basis of their expressed preference toward certain car features such as styling, sportiness, fuel economy, and safety in accidents. These car features had been shown to form four major groupings: symbolic, utilitarian, sensory, and economic. The SOM-based clustering of the data yielded these same groupings of car features, but the economic and utilitarian clusters have been further subdivided into more specific benefits clusters. These benefits clusters have been used to identify a mixture of cultural and geographic factors that would segment the world market in such a way that countries within a market segment are homogeneous in terms of distribution of benefits sought. These market segments are subsequently analyzed for their socio-demographic profile. The paper concludes that SOM is not only an effective clustering method, it also provides an insightful visual depiction of the interrelationships of the clusters by positioning them in such a way that clusters that are spatially near each other resemble each other more.

[1]  Josef A. Mazanec,et al.  Neural market structure analysis: Novel topology‐sensitive methodology , 2001 .

[2]  David J. Spiegelhalter,et al.  Machine Learning, Neural and Statistical Classification , 2009 .

[3]  Sandra J. Milberg,et al.  Evaluation of Brand Extensions: The Role of Product Feature Similarity and Brand Concept Consistency , 1991 .

[4]  David M. Clark,et al.  A convergence theorem for Grossberg learning , 1990, Neural Networks.

[5]  S. Hyakin,et al.  Neural Networks: A Comprehensive Foundation , 1994 .

[6]  Dieter Merkl,et al.  Text classification with self-organizing maps: Some lessons learned , 1998, Neurocomputing.

[7]  Richard G. Mathieu,et al.  A methodology for large-scale R&D planning based on cluster analysis , 1993 .

[8]  Samuel Kaski,et al.  Self organization of a massive document collection , 2000, IEEE Trans. Neural Networks Learn. Syst..

[9]  John A. Hartigan,et al.  Clustering Algorithms , 1975 .

[10]  C. Gielen,et al.  Neural computation and self-organizing maps, an introduction , 1993 .

[11]  Vern Terpstra,et al.  International Dimensions of Marketing , 1999 .

[12]  Ming H. Hsieh,et al.  Identifying Brand Image Dimensionality and Measuring the Degree of Brand Globalization: A Cross-National Study , 2002 .

[13]  Richard G. Mathieu,et al.  Kanban setting through artificial intelligence: a comparative study of artificial neural networks and decision trees , 2000 .

[14]  Yoram Wind,et al.  Issues and Advances in Segmentation Research , 1978 .

[15]  G. Hofstede,et al.  Culture′s Consequences: International Differences in Work-Related Values , 1980 .

[16]  Jerome H. Friedman Multivariate adaptive regression splines (with discussion) , 1991 .

[17]  T. Kohonen,et al.  Visual Explorations in Finance with Self-Organizing Maps , 1998 .

[18]  Richard G. Mathieu,et al.  A rule induction approach for determining the number of kanbans in a just-in-time production system , 1998 .

[19]  Teuvo Kohonen,et al.  The self-organizing map , 1990, Neurocomputing.

[20]  Russell I. Haley Benefit Segmentation: A Decision-oriented Research Tool , 1968 .

[21]  Bernard J. Jaworski,et al.  Strategic Brand Concept-Image Management , 1986 .

[22]  Melody Y. Kiang,et al.  An Evaluation of Self-Organizing Map Networks as a Robust Alternative to Factor Analysis in Data Mining Applications , 2001, Inf. Syst. Res..

[23]  M. Wedel,et al.  A Clusterwise Regression Method for Simultaneous Fuzzy Market Structuring and Benefit Segmentation , 1991 .

[24]  Teuvo Kohonen,et al.  Self-organized formation of topologically correct feature maps , 2004, Biological Cybernetics.