Publication: Analyzing Payment Behaviors And Introducing An Optimal Credit Limit
Type:
Article
Date
2019-12-05
Journal Title
Journal ISSN
Volume Title
Publisher
2019 1st International Conference on Advancements in Computing (ICAC), SLIIT
Abstract
Identifying an optimal credit limit plays a vital role in
telecommunication industry as the credit limit given to
customers is influence on the market, revenue stabilization and
customer retention. Most of the time service providers offer a
fixed credit limit for customers which may cause customer
dissatisfaction and loss of potential revenue. Therefore, it is
essential to determine an optimal credit limit that maintains
customer satisfaction while stabilizing the company revenue.
Clustering algorithms were used to group customers with
similar payment and usage behaviors. Then the optimal credit
limit derived for each cluster is applicable to all the customers
within the cluster. In order to identify the most suitable
clustering algorithm, cluster validation statistics namely,
Silhouette and Dunn indexes were used in this research. Based
on the scores generated from these statistics KMeans algorithm
was chosen. Furthermore, the quality of the KMeans clustering
was evaluated using Silhouette score and the Elbow method. The
optimal number of clusters are identified by those validation
statistics. The significance of this approach is that the optimal
credit limits generated by these clustering models suit dynamic
behaviors of the customer which in turn increases customer
satisfaction while contributing to reducing customer churn and
potential loss of revenue.
Description
Date of Conference: 5-7 Dec. 2019
Date Added to IEEE Xplore: 29 May 2020
Keywords
elecommunication, customer behaviors, machine learning, KMeans Clustering, cluster validation, customer satisfaction, optimal credit limit
