Abstract
A constant in the business world is the frequent movement of customers joining or abandoning companies’ services and products. The customer is one of the company’s most important assets. Reducing the customer abandonment rate has become a matter of survival and, at the same time, the most efficient way to maintain the customer base, since the replacement of dropouts by new customers costs, on average, 40% more. Aiming to mitigate the churn (customer evasion) phenomenon, this study compared predictive models to discover the most efficient method to identify customers who tend to drop out in the context of a banking organization. A literature review of related works on the subject found the neural network, decision tree, random forest and logistic regression models were the most cited, and thus the models were chosen for this work. Quantitative analyses were carried out on a sample of 200,000 credit operations, with 497 explanatory variables. The statistical treatment of the data and the developments of predictive models of churn were performed using the Orange data mining software. The most expressive results were achieved using the random forest model, with an accuracy of 82%.
Highlights
IntroductionPublisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations
This article aims to compare the four main machine learning algorithms according to the literature to find the best predictive churn model to address preventively customer evasions in a banking organization
VOSviewer is a tool we have developed over the past few years that relatively provides the basic functionality needed to view bibliometric networks
Summary
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. The behavior of consumers and their relationships with companies are being affected by the profound changes brought about by access to and speed of information, technological advances, and fierce competitiveness, making them more demanding and less loyal to companies. Successful companies have satisfactory and long-term relationships with their customers (Zhu et al 2017), allowing the institution to focus its efforts on the customer’s needs and opening up new service possibilities (Mehta et al 2016). Searching for new customers is an essential activity for companies, but more costly than maintaining a relationship with an existing customer. Higher attrition rates typically characterize new customers. A satisfied customer indicates and recommends the company to other potential customers (Depren 2018)
Published Version (Free)
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have