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CREATION OF AI-BASED CUSTOMER BEHAVIOR ANALYTICS MODELS TO HELP BUSINESSES IMPROVE MARKET FORECASTING AND PERSONALIZED SERVICES

Authors
  • Maria Gonzalez

    Department of Information Systems, National Autonomous University of Mexico, Mexico
  • Sofia Morales

    Department of Information Systems, National Autonomous University of Mexico, Mexico
  • Javier Torres

    Department of Information Systems, National Autonomous University of Mexico, Mexico
Keywords:
Customer behavior analytics, Personalization, Market forecasting, Deep learning, Customer segmentation
Abstract

Objective: Understanding customer behavior is fundamental to effective market forecasting and personalized service delivery. This paper presents AI-based customer behavior analytics models that leverage deep learning and clustering techniques to segment customers, predict purchasing patterns, and enable personalized marketing strategies. Method: Our multi-layered approach integrates collaborative filtering, sentiment analysis, and sequential pattern mining to create comprehensive customer profiles. Results: Validation using e-commerce datasets shows prediction accuracy improvements of 31% over traditional methods, with personalized recommendations achieving a 24% increase in conversion rates. Novelty: The research contributes to customer relationship management theory and provides actionable insights for businesses seeking to enhance customer engagement through data-driven personalization.

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Published
2025-12-30
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How to Cite

CREATION OF AI-BASED CUSTOMER BEHAVIOR ANALYTICS MODELS TO HELP BUSINESSES IMPROVE MARKET FORECASTING AND PERSONALIZED SERVICES. (2025). International Journal of Artificial Intelligence for Digital Marketing, 2(12), 1-7. https://doi.org/10.61796/ijaifd.v2i12.468

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