Segmentation and Targeting
Segmentation and targeting Cluster analysis Basic question: How can objects (customers, brands, stores, etc.) be grouped such that objects within the same cluster are similar and objects in different clusters are dissimilar? In segmentation, the objects of interest are customers and similarity is assessed in terms of
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