The Number of Clusters in Market Segmentation
Fachartikel 746
Fachbereich
Betriebswirtschaftslehre
Fachrichtung
Marketing/Absatz
Artikel
2005
Sprache
englisch
Co Autoren
Sören W. Scholz; Reinhold Decker
Beschreibung
Learning the 'true' number of clusters in a given data set is a fundamental and largely unsolved problem in data analysis, which seriously affects the
identification of customer segments in marketing research.
In this paper, we discuss the properties of relevant criteria commonly used to
estimate the number of clusters. Moreover, we outline two adaptive clustering algorithms, a growing /c-means algorithm and a growing self-organizing neural network.
In the empirical part of the paper, we find that the first algorithm stops growing
with exactly the number of clusters that we get when determining the optimal
number of clusters by means of the Jt/MP-criterion. This cluster solution proves
to be rather similar to the one we obtain by applying the neural network approach.
To evaluate the clusters, we use association rules. By testing these rules, we show
the differences of patterns underlying particular market segments.
Stichworte