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dc.contributor.authorKhamis Mwero Maneno, Richard Rimiru, Calvins Otieno
dc.date.accessioned2022-01-23T11:32:27Z
dc.date.available2022-01-23T11:32:27Z
dc.date.issued2020
dc.identifier.urihttps://repository.maseno.ac.ke/handle/123456789/4582
dc.descriptionhttps://www.semanticscholar.org/paper/Segmentation-via-principal-component-analysis-for-a-Maneno-Rimiru/42fffbd27ae1bfe8d0d50e7bedd00c04001283b DOI:10.1145/3415088.3415128Corpus ID: 221784889en_US
dc.description.sponsorshipIn today's competitive environment, companies must identify their most profitable customer groups and the groups that have the biggest potential to become as such. By identifying these critical groups, they can target their actions, such as launching tailored products and target one-to-one marketing to meet customer expectations. With the profound advancements in clustering algorithms, segmentation has emerged as the method of choice for isolating the various groups of interest. However, the quality of segments of the groups of interest is affected by the type of input data to the clustering algorithms and associated high dimensionality In this study, Principal Component Analysis has been used to solve the high dimensionality of data problem. Subscriber data from nine transactions were first tested for suitability for factor analysis. Principal component analysis was then used to reduce the nine variables to five inputs. The factored data was then to cluster the various customers into segments. The elbow criterion was used to determine the optimum number of clusters. The data was then clustered via several methods; K-means, FCM, PCM, and Hierarchal. Results showed that k-means was not just the simplest method but also performed best with dimensionally reduced data. By using real case data, the study was able to verify that dimensional reduction can be applied before clustering algorithms. The dimension reduction of telecom data can thus be solved via Principal Component Analysis. The study was extended to include the classification of new subscribers basing on the dimensionally reduced data. For that purpose, a perceptron neural network was created. Using the k-means clusters as targets, a perceptron capable of classifying was created and validated. The perceptron was able to classify new subscribers with acceptable accuracy. Dimension reduction via Principal Component Analysis can, therefore, be used to achieve the segmentation of existing customers and also be used to classify new customers. The use of a perceptron is also important for automating the process of customer classification. Companies can therefore easily identify profitable customers from both old and new customers.en_US
dc.publisherSemantic scholaren_US
dc.titleSegmentation via principal component analysis for perceptron classification: a case study of kenyan mobile subscribersen_US
dc.typeArticleen_US


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