Title :
Multifactor Customer Classification model for IP Transit product
Author :
Yosef, Ian ; Samuels, Christophorus Ivan
Author_Institution :
Sch. of Electr. Eng. & Inf., Inst. Teknol. Bandung, Bandung, Indonesia
Abstract :
Customer Classification has important role in Customer Relationship Management (CRM) and has been applied in many industries, such as retail and manufacturing. However, there is no single model purposely created only for telecommunication wholesale segment, especially IP Transit. This research develops a model for customer classification with consideration of all aspects of customer - company relationship. These aspects are customer value, customer loyalty, and customer risk. The main point is the suitability with real industry. To achieve this objective, we used real transactional data and appropriate method for processing data. Customer lifetime value analysis is done to measure customer value, while Artificial Neural Network is done for measuring customer loyalty, and also Ordinal Regression is done for measuring customer risk. The outputs from these three measurements become the input for clustering using K-Means. The optimal cluster is four clusters which can be retrieved from Elbow Rule on Ward´s Method. From the value of distance to zero point, there is one customer in “Platinum” cluster, twenty two customers in “Gold” cluster, and ten customers in “Silver” and twenty three in “Bronze” clusters.
Keywords :
consumer behaviour; customer relationship management; neural nets; pattern classification; pattern clustering; regression analysis; risk analysis; CRM; IP transit product; Wards method; artificial neural network; bronze cluster; customer lifetime value analysis; customer loyalty; customer relationship management; customer risk; customer-company relationship; elbow rule; gold cluster; k-means clustering; multifactor customer classification model; ordinal regression; platinum cluster; silver cluster; transactional data; Artificial neural networks; Companies; Correlation; Equations; IP networks; Industries; Mathematical model; Artificial Neural Network; Customer Classification; Customer Lifetime Value; Customer Loyalty; Customer Risk; Customer Value; Hierarchical Clustering; K-Means Clustering; Regression Ordinal;
Conference_Titel :
Telecommunication Systems Services and Applications (TSSA), 2014 8th International Conference on
DOI :
10.1109/TSSA.2014.7065955