An Integrated Framework to Recommend Personalized Retention Actions to Control B2C E-Commerce Customer Churn
Shini Renjith

TL;DR
This paper presents an integrated framework that predicts customer churn in B2C e-commerce and recommends personalized retention actions to reduce attrition and enhance customer loyalty.
Contribution
It introduces a novel combined model for churn prediction and personalized retention action recommendation in e-commerce.
Findings
Effective prediction of potential churners.
Personalized retention strategies improve customer retention.
Framework demonstrates practical applicability in real-world scenarios.
Abstract
Considering the level of competition prevailing in Business-to-Consumer (B2C) E-Commerce domain and the huge investments required to attract new customers, firms are now giving more focus to reduce their customer churn rate. Churn rate is the ratio of customers who part away with the firm in a specific time period. One of the best mechanism to retain current customers is to identify any potential churn and respond fast to prevent it. Detecting early signs of a potential churn, recognizing what the customer is looking for by the movement and automating personalized win back campaigns are essential to sustain business in this era of competition. E-Commerce firms normally possess large volume of data pertaining to their existing customers like transaction history, search history, periodicity of purchases, etc. Data mining techniques can be applied to analyse customer behaviour and to…
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