Recommendation Systems and Content Personalization: Algorithms, Applications, and Adaptive Learning
J. Arockia Venice (DMI-St. Eugene University, Zambia), D. Arivazhagan (Academy of Maritime Education and Training, Chennai, India), Nupur Suman (Saraswathi Institute of Medical Sciences, Hapur, India), H. J. Shanthi (Hindustan Institute of Technology and Science, India), and R. Swadhi (Academy of Maritime Education and Training, Chennai, India)
Copyright: © 2025
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Pages: 26
DOI: 10.4018/979-8-3693-6552-6.ch015
Abstract
In the realm of large-scale communication networks, recommendation systems and content personalization are pivotal for enhancing user engagement and satisfaction. This chapter explores various recommendation algorithms, including collaborative filtering, content-based methods, and hybrid approaches, elucidating their diverse applications across different domains. Personalized marketing messages leverage these algorithms to tailor communication strategies to individual preferences, optimizing user interactions and conversion rates. Additionally, the integration of Natural Language Processing (NLP) with adaptive learning techniques is examined, highlighting how these technologies can further refine content recommendations and educational experiences. By analyzing current trends and practical implementations, this chapter provides insights into the transformative impact of recommendation systems and content personalization on modern communication networks, emphasizing the role of advanced algorithms and adaptive technologies in delivering personalized and effective user experiences.
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