Marketing Strategy and Competitive Positioning pdf ebook
partitioned into a predetermined
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hooley graham et al marketing strategy and competitive posit
partitioned into a predetermined number of groups and then reassigns observation to cluster whose centroid is nearest Non-hierarchical methods Hill-climbing methods Cases are not reassigned to a cluster with the nearest centroid but moved between clusters dependent on the basis of a statistical criterion Source: Based on Punj and Stewart (1983). Table 8.1 Clustering methods 213 POST HOC/CLUSTER-BASED SEGMENTATION APPROACHES judgemental. The statistics produced will offer a guide as to where amalgamation of groups results in two quite dissimilar groups being joined. The internal homogeneity of the group will suffer. This is a starting point, and in some circumstances, where segmentation is very clear-cut, will be the best choice. Figure 8.2 shows an example where there are three fairly clearly defined segments on the basis of the two dimensions studied. In this case, ‘eyeballing’ a plot of the positions of each object (in segmentation studies the objects are usually individual respondents) shows three clusters of objects scoring similarly, but not identically, on each of the two dimensions. In most situations, however, there will be several dimensions on which the clustering is being conducted, and several candidate solutions, possibly ranging from a three-group to a ten-group solution. After narrowing down through examination of the statistics, the analyst will then need to examine the marketing implications of each solution, basically addressing the question: ‘If I treat these two groups separately rather than together, what differences will it make to my marketing to them?’ If the answer is ‘little difference’ the groups should usually be amalgamated. This is the creative element of segmentation, where judgement is crucial! Finally, it should also be noted that lifestyle and geodemographic databases depend on some form of cluster analysis to group customers who are alike. The results obtained for ACORN and MOSAIC, for example, are based on judgement as to how many clusters are needed to represent the population adequately, just as tailor-made approaches are. Once the segments have been identified, and described across other criteria, there is a need to validate the segments found. 8.2.4 Validating the segments One of the beauties and problems of cluster analysis is its ability to generate seemingly meaningful groups out of meaningless data. This, and the confusion of algorithms, has frequently led to the approach being treated with scepticism. These uncertainties make validation an important part of segmentation research. Download 6.59 Mb. Do'stlaringiz bilan baham: |
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