JOURNAL ARTICLE

Optimizing Customer Retention Strategies in Retail Using Predictive Analytics and AI.pdf

Abstract

In today’s competitive retail landscape, customer retention has become a critical priority alongside acquisition. This paper explores how predictive analytics and AI-driven personalization empower retailers to strengthen customer loyalty and reduce churn. By analyzing behavioral data and leveraging machine learning algorithms, businesses can proactively engage customers through personalized marketing, targeted offers, dynamic pricing, and real-time support. Key applications such as churn prediction, customer segmentation, and Customer Lifetime Value (CLV) forecasting are examined, along with the advantages of increased ROI, proactive engagement, and data-driven decisions. The paper also highlights challenges, including data privacy, ethical concerns, and algorithmic bias. Looking ahead, it underscores the future role of natural language processing, conversational AI, and explainable AI frameworks in enhancing customer relationships. Ultimately, the integration of intelligent and ethical AI systems marks a transformative shift toward sustainable and personalized customer retention in the retail sector.

Keywords:
Customer retention Personalization Predictive analytics Customer intelligence Customer advocacy Analytics Big data Customer lifetime value Loyalty business model

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Topics

Customer churn and segmentation
Social Sciences →  Business, Management and Accounting →  Marketing
AI and HR Technologies
Social Sciences →  Business, Management and Accounting →  Organizational Behavior and Human Resource Management
Advanced Data and IoT Technologies
Physical Sciences →  Engineering →  Electrical and Electronic Engineering
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