AI-Driven Personalization Strategies and Their Impact on Consumer Engagement in Digital Markets
Keywords:
Artificial intelligence, personalization, consumer engagement, digital markets, recommender systems, hyper-personalization, behavioral analytics, conversational AI, generative AI, ethical AIAbstract
Artificial intelligence has transformed personalization into a central mechanism through which digital platforms shape consumer engagement. This narrative review examines the technological, psychological, and ethical dimensions of AI-driven personalization, emphasizing how machine learning, predictive analytics, real-time recommendation systems, conversational AI, and generative models redefine consumer experience across digital markets. The review synthesizes evidence on six major categories of personalization strategies, including behavioral, content-based, collaborative, context-aware, conversational, and hyper-personalized approaches. Findings indicate that AI-driven personalization significantly enhances cognitive engagement by increasing relevance and reducing information overload, while also strengthening emotional engagement through heightened enjoyment, satisfaction, and trust. Behavioral engagement improves as personalized recommendations elevate click-through rates, purchase intentions, and loyalty behaviors. Social engagement expands through community participation and network effects amplified by personalized content flows. Despite these benefits, the review identifies substantial challenges related to privacy, algorithmic bias, manipulative targeting, autonomy loss, and regulatory compliance. These risks highlight the need for transparent data practices, fair and accountable algorithms, and ethical governance frameworks that protect consumer rights while supporting innovation. The study concludes that AI-driven personalization will continue to shape the evolution of digital markets, but its long-term impact depends on balancing technological sophistication with responsible design principles that foster trust, fairness, and user empowerment.
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Copyright (c) 2025 Davood Mohammadkhani (Author); Nima Majedi (Corresponding author); Sayed Abbas Biniaz , Mona Sarhadi (Author)

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.