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Research Methodology




                    Notes          13.5 Cluster Analysis

                                   Cluster Analysis is used:
                                   1.  To classify persons or objects into small number of clusters or group.
                                   2.  To identify specific customer segment for the company’s brand.
                                   Cluster Analysis is a technique used for classifying objects into groups. This can be used to sort
                                   data (a number of people, companies, cities, brands or any other objects) into homogeneous
                                   groups based on their characteristics.
                                   The result of Cluster Analysis is a grouping of the data into groups called clusters. The researcher
                                   can analyse the clusters for their characteristics and give the cluster, names based on these.
                                   Where can Cluster Analysis be applied?
                                   The marketing application of cluster analysis is in customer segmentation and estimation of
                                   segment sizes. Industries,  where this  technique is  useful include  automobiles, retail  stores,
                                   insurance, B-to-B, durables and packaged goods. Some of the well-known frameworks in consumer
                                   behaviour (like VALS) are based on value cluster analysis.
                                   Cluster Analysis is applicable when:
                                   1.  An FMCG company wants to map the profile of its target audience in terms of life-style,
                                       attitude and perceptions.

                                   2.  A consumer durable company wants to know the features and services a consumer takes
                                       into account, when purchasing through catalogues.
                                   3.  A housing finance corporation wants to identify and cluster the basic characteristics, life-
                                       styles and mindset of persons who would be availing housing loans. Clustering can be
                                       done based on parameters such as interest rates, documentation, processing fee, number
                                       of installments etc.

                                   Process

                                   There are two ways in which Cluster Analysis can be carried out:
                                   1.  First, objects/respondents are segmented into a pre-decided number of clusters. In this
                                       case, a method called non-hierarchical method can be used, which partitions data into the
                                       specified number of clusters
                                   2.  The second method is called the hierarchical method.
                                   The  above two  are basic  approaches used  in cluster  analysis. This can be used to  segment
                                   customer groups for a brand or product category, or to segment retail stores into similar groups
                                   based on selected variables.
                                   Interpretation of Results


                                   Ideally, the variables  should be measured on an interval  or ratio scale. This is because  the
                                   clustering techniques use the distance measure to find the closest objects to group into a cluster.
                                   An example of its use can be clustering of towns similar to each other which will help decide
                                   where to locate new retail stores.
                                   If clusters of customers are found based on their attitudes towards new products and interest in
                                   different kinds of activities, an estimate of the segment size for each segment of the population
                                   can be obtained, by looking at the number of objects in each cluster.





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